| --- |
| title: "Replication Code for CCES Survey Data Analysis" |
| subtitle: "Ideological Asymmetries and the Determinants of Politically-Motivated Reasoning (American Journal of Political Science, 2020)" |
| author: "Brian Guay & Christopher Johnston" |
| date: "6/18/2020" |
| output: |
| html_document: |
| number_sections: yes |
| toc: yes |
|
|
| --- |
| |
| ```{r knitr setup, include=FALSE} |
| knitr::opts_chunk$set(echo = TRUE) |
| ``` |
|
|
| |
|
|
| This markdown file contains the code necessary to run the replication of Study 1 with the data collected from the 2018 Cooperative Congressional Election Study (CCES) survey. The two data sets below contain the unmatched (cces_unmatched_data.rds) and matched (cces_matched_data.rds) versions of the 2018 CCES data, containing items from both the common content and Duke University module components of the CCES. We use common content items to measure issue positions and respondent demographics. Documentation for the common content is available on the [2018 CCES dataverse](https://doi.org/10.7910/DVN/ZSBZ7K/WZWCZ1) and specific common content items are described in detail below. We use items from the Duke University module of the CCES for the experiment. |
|
|
| When compiling in markdown, verify that this markdown file is saved in the same folder as the other replication. R Markdown will set the working directory to this folder by default. When running the code line-by-line, set the working directory to the same location as these materials are located. |
|
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| |
|
|
| ```{r setup, warning = F, echo = T, message = F, include = T} |
|
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| |
| sink(file = "cces_code_log.txt") |
|
|
| |
| rm(list = ls()) |
|
|
| |
| install.packages(c("foreign", "survey", "knitr", "psych")) |
|
|
| |
| library(foreign) |
| library(survey) |
| library(knitr) |
| library(psych) |
|
|
| |
| data <- readRDS(file = "cces_unmatched_data.rds") |
|
|
| |
| dir.create("cces_figures") |
|
|
| |
| source("post.R") |
| source("postSim.R") |
|
|
| |
| makeTransparent<-function(someColor, alpha=100) |
| { |
| newColor<-col2rgb(someColor) |
| apply(newColor, 2, function(curcoldata){rgb(red=curcoldata[1], green=curcoldata[2], |
| blue=curcoldata[3],alpha=alpha, |
| maxColorValue=255)}) |
| } |
|
|
| |
| nsims <- 10000 |
|
|
| |
| set.seed(3109) |
|
|
| ``` |
|
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| |
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| |
|
|
| "On the issue of gun regulation, are you for or against each of the following proposals?" |
|
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| 1. Background checks for all sales, including at gun shows and over the Internet [CC18_320a] |
| 2. Ban assault rifles [CC18_320c] |
| 3. Make it easier for people to obtain a concealed-carry gun permit [CC18_320d] |
|
|
| ```{r} |
|
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| |
|
|
| gun_vars <- c("CC18_320a", "CC18_320c", "CC18_320d") |
|
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| |
|
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| |
| table(data$CC18_320a, useNA = "always") |
| data$gun_1 <- with(data, ifelse(CC18_320a == "For", 0, 1)) |
| table(data$CC18_320a, data$gun_1, useNA = "always") |
|
|
| |
| table(data$CC18_320c, useNA = "always") |
| data$gun_2 <- with(data, ifelse(CC18_320c == "For", 0, 1)) |
| table(data$CC18_320c, data$gun_2, useNA = "always") |
|
|
| |
| table(data$CC18_320d, useNA = "always") |
| data$gun_3 <- with(data, ifelse(CC18_320d == "For", 1, 0)) |
| table(data$CC18_320d, data$gun_3, useNA = "always") |
|
|
| new_gun_vars <- paste("gun", 1:3, sep = "_") |
|
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| psych::alpha(data[,new_gun_vars]) |
|
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| data$gun_mean <- rowMeans(data[,new_gun_vars], na.rm=T) |
|
|
| ``` |
|
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| |
|
|
| "Do you support or oppose each of the following proposals?" |
|
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| 1. Always allow a woman to obtain an abortion as a matter of choice [CC18_321a] |
| 2. Permit abortion ONLY in case of rape, incest or when the woman's life is in danger [CC18_321b] |
| 3. Ban abortions after the 20th week of pregnancy [CC18_321c] |
| 4. Allow employers to decline coverage of abortions in insurance plans [CC18_321d] |
| 5. Prohibit the expenditure of funds authorized or appropriated by federal law for any abortion. [CC18_321e] |
| 6. Make abortions illegal in all circumstances [CC18_321f] |
|
|
| ```{r} |
|
|
| |
|
|
| abort_vars <- c("CC18_321a", "CC18_321b", "CC18_321c", "CC18_321d", |
| "CC18_321e", "CC18_321f") |
|
|
| |
| table(data$CC18_321a, useNA = "always") |
| data$abort_1 <- ifelse(data$CC18_321a == "Support", 0, 1) |
| table(data$CC18_321a,data$abort_1, useNA = "always") |
|
|
| |
| table(data$CC18_321b, useNA = "always") |
| data$abort_2 <- ifelse(data$CC18_321b == "Support", 1, 0) |
| table(data$CC18_321b, data$abort_2, useNA = "always") |
|
|
| |
| table(data$CC18_321c, useNA = "always") |
| data$abort_3 <- ifelse(data$CC18_321c == "Support", 1, 0) |
| table(data$CC18_321c, data$abort_3, useNA = "always") |
|
|
| |
| table(data$CC18_321d, useNA = "always") |
| data$abort_4 <- ifelse(data$CC18_321d == "Support", 1, 0) |
| table(data$CC18_321d, data$abort_4, useNA = "always") |
|
|
| |
| table(data$CC18_321e, useNA = "always") |
| data$abort_5 <- ifelse(data$CC18_321e == "Support", 1, 0) |
| table(data$CC18_321e, data$abort_5, useNA = "always") |
|
|
| |
| table(data$CC18_321f, useNA = "always") |
| data$abort_6 <- ifelse(data$CC18_321f == "Support", 1, 0) |
| table(data$CC18_321f,data$abort_6, useNA = "always") |
|
|
| new_abort_vars <- paste("abort", 1:6, sep = "_") |
|
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| psych::alpha(data[,new_abort_vars]) |
|
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| data$abort_mean <- rowMeans(data[,new_abort_vars], na.rm=T) |
|
|
| ``` |
|
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| |
|
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| CCES common content has 8 immigration issue position questions. We exclude questions that ask about supporting a compromise, because it is not clear how these compromises map onto a pro-anti immigration spectrum (e.g., "Grant legal status to DACA children, spend $25 billion to build the border wall, and reduce legal immigration by eliminating the visa lottery and ending family-based migration"). We also excluded items for which only half the sample was assigned to respond. |
|
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| "What do you think the U.S. government should do about immigration? Do you support or oppose each of the following?" |
|
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| - Increase spending on border security by $25 billion, including building a wall between the U.S. and Mexico. (CC18_322a) |
| - Provide legal status to children of immigrants who are already in the United States and were brought to the United States by their parents. Provide these children the option of citizenship in 10 years if they meet citizenship requirements and commit no crimes. (DACA). (CC18_322b) |
| - Reduce legal immigration by eliminating the visa lottery and ending family-based migration. (CC18_322c_new) |
| - Withhold federal funds from any local police department that does not report to the federal government anyone they identify as an illegal immigrant. (CC18_322c) |
| - Send to prison any person who has been deported from the United States and reenters the United States. (CC18_322f) |
|
|
| ```{r} |
| |
|
|
| |
| table(data$CC18_322a, useNA = "always") |
| data$imm_1 <- ifelse(data$CC18_322a == "Support", 1, 0) |
| table(data$CC18_322a, data$imm_1, useNA = "always") |
|
|
| |
| table(data$CC18_322b, useNA = "always") |
| data$imm_2 <- ifelse(data$CC18_322b == "Support", 0, 1) |
| table(data$CC18_322b, data$imm_2, useNA = "always") |
|
|
| |
| table(data$CC18_322c_new, useNA = "always") |
| data$imm_3 <- ifelse(data$CC18_322c_new == "Support", 1, 0) |
| table(data$CC18_322c_new, data$imm_3, useNA = "always") |
|
|
| |
| table(data$CC18_322c, useNA = "always") |
| data$imm_4 <- ifelse(data$CC18_322c == "Support", 1, 0) |
| table(data$CC18_322c, data$imm_4, useNA = "always") |
|
|
| |
| table(data$CC18_322f, useNA = "always") |
| data$imm_5 <- ifelse(data$CC18_322f == "Support", 1, 0) |
| table(data$CC18_322f, data$imm_5, useNA = "always") |
|
|
| new_imm_vars <- paste("imm", 1:5, sep = "_") |
|
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| psych::alpha(data[,new_imm_vars]) |
|
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| data$imm_mean <- rowMeans(data[,new_imm_vars], na.rm=T) |
|
|
| ``` |
|
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| |
|
|
| Participants participated in a 2 (congenial finding, uncongenial finding) X 3 (gun control, immigration, abortion) experiment. Respondents were assigned a value for the *cond_direction* variable, which indicated the direction of the finding they were presented with. Respondents were also assigned a value for the *cond_issue* variable, which indicated the issue they were provided evidence about. |
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| |
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| To determine whether we evidence provided to respondents was congenial with their prior beliefs, two pieces of information are taken into account: whether the evidence supports a liberal or conservative position and the respondent's prior beliefs. |
|
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| Because one of the only differences between conditions in Experiment 2 is the words "increase" and "decrease", which determine the direction of the evidence provided to respondents, the variable used to assign experimental condition (*cond_direction* variable, below) has two levels: increase and decrease. |
|
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| For abortion, 'increase' indicates evidence in the liberal direction (restricting abortion increases abortion-related maternal deaths). For gun control and immigration, 'increase' indicates evidence in the conservative direction (restricting open carry increases the crime rate, sanctuary cities increase crime). |
|
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| Below we create a variable ('finding_lr'), which indicates whether the finding presented to respondents supported the liberal or conservative position. |
|
|
| ```{r} |
|
|
| |
| data$cond_direction <- data$DKU439_treat |
| table(data$cond_direction, useNA = "always") |
|
|
| |
| data$cond_issue <- data$DKU440_treat |
| table(data$cond_issue, useNA = "always") |
|
|
| |
| with(data, table(cond_issue, cond_direction)) |
| with(data, prop.table(table(cond_issue, cond_direction))) |
|
|
| |
| data$finding_direction <- |
| ifelse(data$cond_issue == "guns" & data$cond_direction == "increase", "right", |
| ifelse(data$cond_issue == "guns" & data$cond_direction == "decrease", "left", |
| ifelse(data$cond_issue == "imm" & data$cond_direction == "increase", "right", |
| ifelse(data$cond_issue == "imm" & data$cond_direction == "decrease", "left", |
| ifelse(data$cond_issue == "abort" & data$cond_direction == "increase", "left", |
| ifelse(data$cond_issue == "abort" & data$cond_direction == "decrease", "right", |
| "foo")))))) |
|
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| |
| |
|
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| |
| data$finding_lr <- ifelse(data$finding_direction == "left", 1, |
| ifelse(data$finding_direction == "right", 0, NA)) |
|
|
| ``` |
|
|
| To determine whether the finding reported was congenial or uncongenial, we must take each respondents' prior beliefs into account. We operationalize prior beliefs in three separate ways: self-reported ideology, party ID, and positions on the issue at hand. |
|
|
| ```{r} |
|
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| |
| |
|
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| |
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| data$issue_mean <- ifelse(data$cond_issue == "guns", data$gun_mean, |
| ifelse(data$cond_issue == "abort", data$abort_mean, |
| ifelse(data$cond_issue == "imm", data$imm_mean, NA))) |
|
|
| |
| data$issue_mean_binaryCon <- ifelse(data$issue_mean > .50, 1, |
| ifelse(data$issue_mean < .50, 0, NA)) |
|
|
| |
| with(data, table(issue_mean, issue_mean_binaryCon, useNA = "always")) |
|
|
| |
| data$congenial_issue <- ifelse(data$finding_direction == "right", data$issue_mean, |
| ifelse(data$finding_direction == "left", |
| abs(1-data$issue_mean), NA)) |
|
|
| |
|
|
| |
| data$pid7_original <- data$pid7 |
|
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| data$pid7[data$pid7 == "Not sure"] <- NA |
|
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| data$pid7 <- as.numeric(data$pid7) |
|
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| |
| table(data$pid7, data$pid7_original) |
|
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| |
| data$rep_dem <- ifelse(data$pid7 > 4, 1, |
| ifelse(data$pid7 < 4, 0, NA)) |
|
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| |
| with(data, table(pid7, rep_dem, useNA = "always")) |
|
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| |
| data$congenial_pid <- ifelse(data$finding_direction == "right", data$pid7, |
| ifelse(data$finding_direction == "left", abs(8-data$pid7), |
| 1111)) |
|
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| |
|
|
| |
| data$ideo7 <- as.numeric(data$CC18_334A.1) |
| table(data$CC18_334A, data$ideo7) |
| data$ideo7[data$ideo7 == 8] <- NA |
|
|
| |
| table(data$CC18_334A.1, data$ideo7) |
|
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| |
| data$con_lib <- ifelse(data$ideo7 > 4, 1, |
| ifelse(data$ideo7 < 4, 0, NA)) |
|
|
| |
| with(data, table(con_lib, ideo7, useNA = "always")) |
|
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| |
| data$congenial_ideo <- ifelse(data$finding_direction == "right", data$ideo7, |
| ifelse(data$finding_direction == "left", abs(8-data$ideo7), |
| 1111)) |
|
|
| ``` |
|
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| |
|
|
| Each respondent answered 2 questions: |
| - Is sample size sufficient? (7 = sample is too small) |
| - Can we make causal claim? (7 = cannot make causal claim) |
| |
| In each case, high values reflect a critical/skeptical interpretation of the evidence. |
| |
| ```{r} |
|
|
| |
| data$guns_sample <- as.numeric(data$DKU441) |
| table(data$guns_sample, data$DKU441) |
|
|
| |
| data$guns_causal <- as.numeric(data$DKU442) |
| table(data$guns_causal, data$DKU442) |
|
|
| |
| data$abort_sample <- as.numeric(data$DKU443) |
| table(data$abort_sample, data$DKU443) |
|
|
| |
| data$abort_causal <- as.numeric(data$DKU444) |
| table(data$abort_causal, data$DKU444) |
|
|
| |
| data$imm_sample <- as.numeric(data$DKU447) |
| table(data$imm_sample, data$DKU447) |
|
|
| |
| data$imm_causal <- as.numeric(data$DKU448) |
| table(data$imm_causal, data$DKU448) |
|
|
| causal_vars <- c(paste(c("guns", "abort", "imm"), "causal", sep = "_")) |
| sample_vars <- c(paste(c("guns", "abort", "imm"), "sample", sep = "_")) |
|
|
| head(data[,causal_vars]) |
| head(data[,sample_vars]) |
|
|
| |
| data$goodCausal.0 <- ifelse(data$cond_issue == "guns", data$guns_causal, |
| ifelse(data$cond_issue == "abort", data$abort_causal, |
| ifelse(data$cond_issue == "imm", data$imm_causal, NA))) |
|
|
| data$goodSample.0 <- ifelse(data$cond_issue == "guns", data$guns_sample, |
| ifelse(data$cond_issue == "abort", data$abort_sample, |
| ifelse(data$cond_issue == "imm", data$imm_sample, NA))) |
|
|
| |
| data$goodCausal <- 8-data$goodCausal.0 |
| table(data$goodCausal, data$goodCausal.0) |
| data$goodCausal_uns <- data$goodCausal |
|
|
| data$goodSample <- 8-data$goodSample.0 |
| table(data$goodSample, data$goodSample.0) |
| data$goodSample_uns <- data$goodSample |
|
|
| |
| data$goodSample <- as.numeric(scale(data$goodSample)) |
| data$goodCausal <- as.numeric(scale(data$goodCausal)) |
|
|
| cor(data$goodSample, data$goodCausal, use = "complete.obs") |
|
|
| ``` |
|
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|
|
| |
|
|
| ```{r} |
|
|
| |
|
|
| |
| ss_ideo_lib_ub <- lm(goodSample ~ con_lib + cond_issue, data[data$finding_lr == 1,]) |
| ss_ideo_con_ub <- lm(goodSample ~ con_lib + cond_issue, data[data$finding_lr == 0,]) |
|
|
| cc_ideo_lib_ub <- lm(goodCausal ~ con_lib + cond_issue, data[data$finding_lr == 1,]) |
| cc_ideo_con_ub <- lm(goodCausal ~ con_lib + cond_issue, data[data$finding_lr == 0,]) |
|
|
| |
| ss_pid_lib_ub <- lm(goodSample ~ rep_dem + cond_issue, data[data$finding_lr == 1,]) |
| ss_pid_con_ub <- lm(goodSample ~ rep_dem + cond_issue, data[data$finding_lr == 0,]) |
|
|
| cc_pid_lib_ub <- lm(goodCausal ~ rep_dem + cond_issue, data[data$finding_lr == 1,]) |
| cc_pid_con_ub <- lm(goodCausal ~ rep_dem + cond_issue, data[data$finding_lr == 0,]) |
|
|
| |
| ss_iss_lib_ub <- lm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| data[data$finding_lr == 1,]) |
| ss_iss_con_ub <- lm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| data[data$finding_lr == 0,]) |
|
|
| cc_iss_lib_ub <- lm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| data[data$finding_lr == 1,]) |
| cc_iss_con_ub <- lm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| data[data$finding_lr == 0,]) |
|
|
| |
| p_ss_ideo_lib_ub <- post(model = ss_ideo_lib_ub, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_ss_ideo_con_ub <- post(model = ss_ideo_con_ub, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_ideo_lib_ub <- post(model = cc_ideo_lib_ub, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_cc_ideo_con_ub <- post(model = cc_ideo_con_ub, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_pid_lib_ub <- post(model = ss_pid_lib_ub, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_ss_pid_con_ub <- post(model = ss_pid_con_ub, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_pid_lib_ub <- post(model = cc_pid_lib_ub, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_cc_pid_con_ub <- post(model = cc_pid_con_ub, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_iss_lib_ub <- post(model = ss_iss_lib_ub, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
| p_ss_iss_con_ub <- post(model = ss_iss_con_ub, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
|
|
| p_cc_iss_lib_ub <- post(model = cc_iss_lib_ub, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
| p_cc_iss_con_ub <- post(model = cc_iss_con_ub, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
|
|
| |
| |
|
|
| |
|
|
| pdf("cces_figures/cces_ub_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.4, .6), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_iss_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_ss_iss_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_ss_iss_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_ss_iss_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_lib_ub@est[1:2,2], |
| y1 = p_ss_iss_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_con_ub@est[1:2,2], |
| y1 = p_ss_iss_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
|
|
| legend("topleft", legend = c("Left", "Right"), |
| |
| col = c("deepskyblue3", "firebrick2"), |
| pch = c(16,15), |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.4, .6), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_ideo_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_ss_ideo_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_ss_ideo_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_ss_ideo_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_lib_ub@est[1:2,2], |
| y1 = p_ss_ideo_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_con_ub@est[1:2,2], |
| y1 = p_ss_ideo_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.4, .6), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_pid_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_ss_pid_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_ss_pid_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_ss_pid_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_lib_ub@est[1:2,2], |
| y1 = p_ss_pid_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_con_ub@est[1:2,2], |
| y1 = p_ss_pid_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_ub_2.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_iss_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_cc_iss_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_cc_iss_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_cc_iss_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_lib_ub@est[1:2,2], |
| y1 = p_cc_iss_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_con_ub@est[1:2,2], |
| y1 = p_cc_iss_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_ideo_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_cc_ideo_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_cc_ideo_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_cc_ideo_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_lib_ub@est[1:2,2], |
| y1 = p_cc_ideo_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_con_ub@est[1:2,2], |
| y1 = p_cc_ideo_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_pid_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 4) |
| points(0:1, p_cc_pid_con_ub@est[1:2,1], pch = 15, col = "firebrick2", cex = 4) |
|
|
| points(0:1, p_cc_pid_lib_ub@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 4, lty = 2) |
| points(0:1, p_cc_pid_con_ub@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_lib_ub@est[1:2,2], |
| y1 = p_cc_pid_lib_ub@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 7) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_con_ub@est[1:2,2], |
| y1 = p_cc_pid_con_ub@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 7) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_ub <- (p_ss_iss_con_ub@sims[,ncol(p_ss_iss_con_ub@sims)] - |
| p_ss_iss_lib_ub@sims[,ncol(p_ss_iss_lib_ub@sims)]) - |
| (p_ss_iss_lib_ub@sims[,1] - |
| p_ss_iss_con_ub@sims[,1]) |
|
|
| d_ss_ideo_ub <- (p_ss_ideo_con_ub@sims[,ncol(p_ss_ideo_con_ub@sims)] - |
| p_ss_ideo_lib_ub@sims[,ncol(p_ss_ideo_lib_ub@sims)]) - |
| (p_ss_ideo_lib_ub@sims[,1] - |
| p_ss_ideo_con_ub@sims[,1]) |
|
|
| d_ss_pid_ub <- (p_ss_pid_con_ub@sims[,ncol(p_ss_pid_con_ub@sims)] - |
| p_ss_pid_lib_ub@sims[,ncol(p_ss_pid_lib_ub@sims)]) - |
| (p_ss_pid_lib_ub@sims[,1] - |
| p_ss_pid_con_ub@sims[,1]) |
|
|
| |
| d_cc_iss_ub <- (p_cc_iss_con_ub@sims[,ncol(p_cc_iss_con_ub@sims)] - |
| p_cc_iss_lib_ub@sims[,ncol(p_cc_iss_lib_ub@sims)]) - |
| (p_cc_iss_lib_ub@sims[,1] - |
| p_cc_iss_con_ub@sims[,1]) |
|
|
| d_cc_ideo_ub <- (p_cc_ideo_con_ub@sims[,ncol(p_cc_ideo_con_ub@sims)] - |
| p_cc_ideo_lib_ub@sims[,ncol(p_cc_ideo_lib_ub@sims)]) - |
| (p_cc_ideo_lib_ub@sims[,1] - |
| p_cc_ideo_con_ub@sims[,1]) |
|
|
| d_cc_pid_ub <- (p_cc_pid_con_ub@sims[,ncol(p_cc_pid_con_ub@sims)] - |
| p_cc_pid_lib_ub@sims[,ncol(p_cc_pid_lib_ub@sims)]) - |
| (p_cc_pid_lib_ub@sims[,1] - |
| p_cc_pid_con_ub@sims[,1]) |
| |
| |
|
|
| |
| d_names_ub <- as.data.frame(cbind(d_ss_iss_ub, d_ss_ideo_ub, d_ss_pid_ub, |
| d_cc_iss_ub, d_cc_ideo_ub, d_cc_pid_ub)) |
|
|
| dtbl_ub <- data.frame(name = colnames(d_names_ub), |
| mean = apply(d_names_ub, 2, mean), |
| ci.lo = apply(d_names_ub, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_ub, 2, quantile, probs = .975)) |
|
|
| pdf("cces_figures/cces_ub_3.pdf", height = 6, width = 8) |
|
|
| |
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_ub$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_ub$ci.lo[1:3], y1 = dtbl_ub$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = -17.5, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
|
|
| |
| pdf("cces_figures/cces_ub_4.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_ub$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_ub$ci.lo[4:6], y1 = dtbl_ub$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| legend("bottomleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 2) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = 0, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| dev.off() |
| |
| ``` |
|
|
| |
|
|
| ```{r} |
|
|
| |
|
|
| |
| ss_ideo_lib_uc <- lm(goodSample ~ ideo7 + cond_issue, data[data$finding_lr == 1,]) |
| ss_ideo_con_uc <- lm(goodSample ~ ideo7 + cond_issue, data[data$finding_lr == 0,]) |
|
|
| cc_ideo_lib_uc <- lm(goodCausal ~ ideo7 + cond_issue, data[data$finding_lr == 1,]) |
| cc_ideo_con_uc <- lm(goodCausal ~ ideo7 + cond_issue, data[data$finding_lr == 0,]) |
|
|
| |
| ss_pid_lib_uc <- lm(goodSample ~ pid7 + cond_issue, data[data$finding_lr == 1,]) |
| ss_pid_con_uc <- lm(goodSample ~ pid7 + cond_issue, data[data$finding_lr == 0,]) |
|
|
| cc_pid_lib_uc <- lm(goodCausal ~ pid7 + cond_issue, data[data$finding_lr == 1,]) |
| cc_pid_con_uc <- lm(goodCausal ~ pid7 + cond_issue, data[data$finding_lr == 0,]) |
|
|
| |
| ss_iss_lib_uc <- lm(goodSample ~ issue_mean + cond_issue, data[data$finding_lr == 1,]) |
| ss_iss_con_uc <- lm(goodSample ~ issue_mean + cond_issue, data[data$finding_lr == 0,]) |
|
|
| cc_iss_lib_uc <- lm(goodCausal ~ issue_mean + cond_issue, data[data$finding_lr == 1,]) |
| cc_iss_con_uc <- lm(goodCausal ~ issue_mean + cond_issue, data[data$finding_lr == 0,]) |
|
|
| |
| p_ss_ideo_lib_uc <- post(model = ss_ideo_lib_uc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_ss_ideo_con_uc <- post(model = ss_ideo_con_uc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_ideo_lib_uc <- post(model = cc_ideo_lib_uc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_cc_ideo_con_uc <- post(model = cc_ideo_con_uc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_pid_lib_uc <- post(model = ss_pid_lib_uc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_ss_pid_con_uc <- post(model = ss_pid_con_uc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_pid_lib_uc <- post(model = cc_pid_lib_uc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_cc_pid_con_uc <- post(model = cc_pid_con_uc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_iss_lib_uc <- post(model = ss_iss_lib_uc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
| p_ss_iss_con_uc <- post(model = ss_iss_con_uc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_iss_lib_uc <- post(model = cc_iss_lib_uc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
| p_cc_iss_con_uc <- post(model = cc_iss_con_uc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
|
|
|
|
| |
| |
|
|
| |
| pdf("cces_figures/cces_uc_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
|
|
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(seq(0,1,.1), p_ss_iss_lib_uc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_ss_iss_con_uc@est[1:11,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_lib_uc@est[1:11,2], rev(p_ss_iss_lib_uc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_con_uc@est[1:11,2], rev(p_ss_iss_con_uc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| legend(0, 1, legend = c("Left", "Right"), |
| lty = c(2,1), lwd = 4, col = c(makeTransparent("deepskyblue3"), "firebrick2"), |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_ideo_lib_uc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, |
| type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_ideo_con_uc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_lib_uc@est[1:7,2], rev(p_ss_ideo_lib_uc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_con_uc@est[1:7,2], rev(p_ss_ideo_con_uc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_pid_lib_uc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_pid_con_uc@est[1:7,1], pch = 15, col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_lib_uc@est[1:7,2], rev(p_ss_pid_lib_uc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_con_uc@est[1:7,2], rev(p_ss_pid_con_uc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_uc_2.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
| seq(0,1,.1) |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
| length(seq(0,1,.1)) |
| points(seq(0,1,.1), p_cc_iss_lib_uc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_cc_iss_con_uc@est[1:11,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_lib_uc@est[1:11,2], rev(p_cc_iss_lib_uc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_con_uc@est[1:11,2], rev(p_cc_iss_con_uc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_ideo_lib_uc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_ideo_con_uc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_lib_uc@est[1:7,2], rev(p_cc_ideo_lib_uc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_con_uc@est[1:7,2], rev(p_cc_ideo_con_uc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_pid_lib_uc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_pid_con_uc@est[1:7,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_lib_uc@est[1:7,2], rev(p_cc_pid_lib_uc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_con_uc@est[1:7,2], rev(p_cc_pid_con_uc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_uc <- (p_ss_iss_con_uc@sims[,ncol(p_ss_iss_con_uc@sims)] - |
| p_ss_iss_lib_uc@sims[,ncol(p_ss_iss_lib_uc@sims)]) - |
| (p_ss_iss_lib_uc@sims[,1] - |
| p_ss_iss_con_uc@sims[,1]) |
|
|
| d_ss_ideo_uc <- (p_ss_ideo_con_uc@sims[,ncol(p_ss_ideo_con_uc@sims)] - |
| p_ss_ideo_lib_uc@sims[,ncol(p_ss_ideo_lib_uc@sims)]) - |
| (p_ss_ideo_lib_uc@sims[,1] - |
| p_ss_ideo_con_uc@sims[,1]) |
|
|
| d_ss_pid_uc <- (p_ss_pid_con_uc@sims[,ncol(p_ss_pid_con_uc@sims)] - |
| p_ss_pid_lib_uc@sims[,ncol(p_ss_pid_lib_uc@sims)]) - |
| (p_ss_pid_lib_uc@sims[,1] - |
| p_ss_pid_con_uc@sims[,1]) |
|
|
| |
| d_cc_iss_uc <- (p_cc_iss_con_uc@sims[,ncol(p_cc_iss_con_uc@sims)] - |
| p_cc_iss_lib_uc@sims[,ncol(p_cc_iss_lib_uc@sims)]) - |
| (p_cc_iss_lib_uc@sims[,1] - |
| p_cc_iss_con_uc@sims[,1]) |
|
|
| d_cc_ideo_uc <- (p_cc_ideo_con_uc@sims[,ncol(p_cc_ideo_con_uc@sims)] - |
| p_cc_ideo_lib_uc@sims[,ncol(p_cc_ideo_lib_uc@sims)]) - |
| (p_cc_ideo_lib_uc@sims[,1] - |
| p_cc_ideo_con_uc@sims[,1]) |
|
|
| d_cc_pid_uc <- (p_cc_pid_con_uc@sims[,ncol(p_cc_pid_con_uc@sims)] - |
| p_cc_pid_lib_uc@sims[,ncol(p_cc_pid_lib_uc@sims)]) - |
| (p_cc_pid_lib_uc@sims[,1] - |
| p_cc_pid_con_uc@sims[,1]) |
|
|
| |
| d_names_uc <- as.data.frame(cbind(d_ss_iss_uc, d_ss_ideo_uc, d_ss_pid_uc, |
| d_cc_iss_uc, d_cc_ideo_uc, d_cc_pid_uc)) |
|
|
| dtbl_uc <- data.frame(name = colnames(d_names_uc), |
| mean = apply(d_names_uc, 2, mean), |
| ci.lo = apply(d_names_uc, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_uc, 2, quantile, probs = .975)) |
|
|
| |
|
|
| pdf("cces_figures/cces_uc_3.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,6,1,0), mar = c(4.1,1,1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_uc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4, col = "white") |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_uc$ci.lo[1:3], y1 = dtbl_uc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("white", 150)) |
|
|
| legend("topleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 3) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_uc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_uc$ci.lo[1:3], y1 = dtbl_uc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_uc$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_uc$ci.lo[4:6], y1 = dtbl_uc$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| |
| axis(1, at = -17:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = -17, x1 = -17, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| segments(x0 = -17.5, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
| ``` |
|
|
|
|
| |
|
|
| ```{r setup II, warning = F, echo = T, message = F, include = T} |
|
|
| |
| |
| |
| data_matched_original <- readRDS(file = "cces_matched_data.rds") |
|
|
| class(data_matched_original) |
| dim(data_matched_original) |
|
|
| |
| matched_ids <- data_matched_original$caseid |
| length(matched_ids) |
|
|
| |
| data_matched <- data[data$caseid %in% matched_ids,] |
|
|
| dim(data_matched) |
|
|
| ``` |
|
|
| |
|
|
| ```{r} |
|
|
| |
|
|
| |
| ss_ideo_lib_mb <- lm(goodSample ~ con_lib + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_ideo_con_mb <- lm(goodSample ~ con_lib + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_ideo_lib_mb <- lm(goodCausal ~ con_lib + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_ideo_con_mb <- lm(goodCausal ~ con_lib + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| ss_pid_lib_mb <- lm(goodSample ~ rep_dem + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_pid_con_mb <- lm(goodSample ~ rep_dem + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_pid_lib_mb <- lm(goodCausal ~ rep_dem + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_pid_con_mb <- lm(goodCausal ~ rep_dem + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| ss_iss_lib_mb <- lm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_iss_con_mb <- lm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_iss_lib_mb <- lm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_iss_con_mb <- lm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| p_ss_ideo_lib_mb <- post(model = ss_ideo_lib_mb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_ss_ideo_con_mb <- post(model = ss_ideo_con_mb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_ideo_lib_mb <- post(model = cc_ideo_lib_mb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_cc_ideo_con_mb <- post(model = cc_ideo_con_mb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_pid_lib_mb <- post(model = ss_pid_lib_mb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_ss_pid_con_mb <- post(model = ss_pid_con_mb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_pid_lib_mb <- post(model = cc_pid_lib_mb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
| p_cc_pid_con_mb <- post(model = cc_pid_con_mb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_iss_lib_mb <- post(model = ss_iss_lib_mb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
| p_ss_iss_con_mb <- post(model = ss_iss_con_mb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
|
|
| p_cc_iss_lib_mb <- post(model = cc_iss_lib_mb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
| p_cc_iss_con_mb <- post(model = cc_iss_con_mb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5) |
|
|
| |
| |
|
|
| |
|
|
| pdf("cces_figures/cces_mb_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_iss_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_iss_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_iss_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_iss_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_lib_mb@est[1:2,2], |
| y1 = p_ss_iss_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_con_mb@est[1:2,2], |
| y1 = p_ss_iss_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| legend(.5, 1, legend = c("Left", "Right"), |
| lty = 1, lwd = 4, col = c(makeTransparent("deepskyblue3"), "firebrick2"), |
| pch = 16, |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_ideo_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_ideo_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_ideo_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_ideo_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_lib_mb@est[1:2,2], |
| y1 = p_ss_ideo_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_con_mb@est[1:2,2], |
| y1 = p_ss_ideo_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_pid_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_pid_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_pid_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_pid_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_lib_mb@est[1:2,2], |
| y1 = p_ss_pid_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_con_mb@est[1:2,2], |
| y1 = p_ss_pid_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_mb_2.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_iss_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_iss_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_iss_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_iss_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_lib_mb@est[1:2,2], |
| y1 = p_cc_iss_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_con_mb@est[1:2,2], |
| y1 = p_cc_iss_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_ideo_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_ideo_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_ideo_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_ideo_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_lib_mb@est[1:2,2], |
| y1 = p_cc_ideo_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_con_mb@est[1:2,2], |
| y1 = p_cc_ideo_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_pid_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_pid_con_mb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_pid_lib_mb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_pid_con_mb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_lib_mb@est[1:2,2], |
| y1 = p_cc_pid_lib_mb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_con_mb@est[1:2,2], |
| y1 = p_cc_pid_con_mb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_mb <- (p_ss_iss_con_mb@sims[,ncol(p_ss_iss_con_mb@sims)] - |
| p_ss_iss_lib_mb@sims[,ncol(p_ss_iss_lib_mb@sims)]) - |
| (p_ss_iss_lib_mb@sims[,1] - |
| p_ss_iss_con_mb@sims[,1]) |
|
|
| d_ss_ideo_mb <- (p_ss_ideo_con_mb@sims[,ncol(p_ss_ideo_con_mb@sims)] - |
| p_ss_ideo_lib_mb@sims[,ncol(p_ss_ideo_lib_mb@sims)]) - |
| (p_ss_ideo_lib_mb@sims[,1] - |
| p_ss_ideo_con_mb@sims[,1]) |
|
|
| d_ss_pid_mb <- (p_ss_pid_con_mb@sims[,ncol(p_ss_pid_con_mb@sims)] - |
| p_ss_pid_lib_mb@sims[,ncol(p_ss_pid_lib_mb@sims)]) - |
| (p_ss_pid_lib_mb@sims[,1] - |
| p_ss_pid_con_mb@sims[,1]) |
|
|
| |
| d_cc_iss_mb <- (p_cc_iss_con_mb@sims[,ncol(p_cc_iss_con_mb@sims)] - |
| p_cc_iss_lib_mb@sims[,ncol(p_cc_iss_lib_mb@sims)]) - |
| (p_cc_iss_lib_mb@sims[,1] - |
| p_cc_iss_con_mb@sims[,1]) |
|
|
| d_cc_ideo_mb <- (p_cc_ideo_con_mb@sims[,ncol(p_cc_ideo_con_mb@sims)] - |
| p_cc_ideo_lib_mb@sims[,ncol(p_cc_ideo_lib_mb@sims)]) - |
| (p_cc_ideo_lib_mb@sims[,1] - |
| p_cc_ideo_con_mb@sims[,1]) |
|
|
| d_cc_pid_mb <- (p_cc_pid_con_mb@sims[,ncol(p_cc_pid_con_mb@sims)] - |
| p_cc_pid_lib_mb@sims[,ncol(p_cc_pid_lib_mb@sims)]) - |
| (p_cc_pid_lib_mb@sims[,1] - |
| p_cc_pid_con_mb@sims[,1]) |
| |
| |
|
|
| |
| d_names_mb <- as.data.frame(cbind(d_ss_iss_mb, d_ss_ideo_mb, d_ss_pid_mb, |
| d_cc_iss_mb, d_cc_ideo_mb, d_cc_pid_mb)) |
|
|
| dtbl_mb <- data.frame(name = colnames(d_names_mb), |
| mean = apply(d_names_mb, 2, mean), |
| ci.lo = apply(d_names_mb, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_mb, 2, quantile, probs = .975)) |
|
|
| pdf("cces_figures/cces_mb_3.pdf", height = 6, width = 8) |
|
|
| |
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_mb$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_mb$ci.lo[1:3], y1 = dtbl_mb$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = -17.5, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
|
|
| |
| pdf("cces_figures/cces_mb_4.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_mb$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_mb$ci.lo[4:6], y1 = dtbl_mb$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| legend("bottomleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 2) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = 0, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| dev.off() |
| |
| ``` |
|
|
| |
|
|
| ```{r} |
|
|
| |
|
|
| |
| ss_ideo_lib_mc <- lm(goodSample ~ ideo7 + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_ideo_con_mc <- lm(goodSample ~ ideo7 + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_ideo_lib_mc <- lm(goodCausal ~ ideo7 + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_ideo_con_mc <- lm(goodCausal ~ ideo7 + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| ss_pid_lib_mc <- lm(goodSample ~ pid7 + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_pid_con_mc <- lm(goodSample ~ pid7 + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_pid_lib_mc <- lm(goodCausal ~ pid7 + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_pid_con_mc <- lm(goodCausal ~ pid7 + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| ss_iss_lib_mc <- lm(goodSample ~ issue_mean + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| ss_iss_con_mc <- lm(goodSample ~ issue_mean + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| cc_iss_lib_mc <- lm(goodCausal ~ issue_mean + cond_issue, |
| data_matched[data_matched$finding_lr == 1,]) |
| cc_iss_con_mc <- lm(goodCausal ~ issue_mean + cond_issue, |
| data_matched[data_matched$finding_lr == 0,]) |
|
|
| |
| p_ss_ideo_lib_mc <- post(model = ss_ideo_lib_mc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_ss_ideo_con_mc <- post(model = ss_ideo_con_mc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_ideo_lib_mc <- post(model = cc_ideo_lib_mc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_cc_ideo_con_mc <- post(model = cc_ideo_con_mc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_pid_lib_mc <- post(model = ss_pid_lib_mc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_ss_pid_con_mc <- post(model = ss_pid_con_mc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_pid_lib_mc <- post(model = cc_pid_lib_mc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
| p_cc_pid_con_mc <- post(model = cc_pid_con_mc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5) |
|
|
| p_ss_iss_lib_mc <- post(model = ss_iss_lib_mc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
| p_ss_iss_con_mc <- post(model = ss_iss_con_mc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
|
|
| p_cc_iss_lib_mc <- post(model = cc_iss_lib_mc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
| p_cc_iss_con_mc <- post(model = cc_iss_con_mc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5) |
|
|
|
|
| |
| |
|
|
| |
| pdf("cces_figures/cces_mc_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_ideo_lib_mc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, |
| type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_ideo_con_mc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_lib_mc@est[1:7,2], rev(p_ss_ideo_lib_mc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_con_mc@est[1:7,2], rev(p_ss_ideo_con_mc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| legend(1.5, 1, legend = c("L", "R"), |
| lty = c(2,1), lwd = 4, col = c(makeTransparent("deepskyblue3"), "firebrick2"), |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_pid_lib_mc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_pid_con_mc@est[1:7,1], pch = 15, col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_lib_mc@est[1:7,2], rev(p_ss_pid_lib_mc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_con_mc@est[1:7,2], rev(p_ss_pid_con_mc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| |
|
|
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(seq(0,1,.1), p_ss_iss_lib_mc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_ss_iss_con_mc@est[1:11,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_lib_mc@est[1:11,2], rev(p_ss_iss_lib_mc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_con_mc@est[1:11,2], rev(p_ss_iss_con_mc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_mc_2.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_ideo_lib_mc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_ideo_con_mc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_lib_mc@est[1:7,2], rev(p_cc_ideo_lib_mc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_con_mc@est[1:7,2], rev(p_cc_ideo_con_mc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_pid_lib_mc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_pid_con_mc@est[1:7,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_lib_mc@est[1:7,2], rev(p_cc_pid_lib_mc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_con_mc@est[1:7,2], rev(p_cc_pid_con_mc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| |
| seq(0,1,.1) |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
| length(seq(0,1,.1)) |
| points(seq(0,1,.1), p_cc_iss_lib_mc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_cc_iss_con_mc@est[1:11,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_lib_mc@est[1:11,2], rev(p_cc_iss_lib_mc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_con_mc@est[1:11,2], rev(p_cc_iss_con_mc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_mc <- (p_ss_iss_con_mc@sims[,ncol(p_ss_iss_con_mc@sims)] - |
| p_ss_iss_lib_mc@sims[,ncol(p_ss_iss_lib_mc@sims)]) - |
| (p_ss_iss_lib_mc@sims[,1] - |
| p_ss_iss_con_mc@sims[,1]) |
|
|
| d_ss_ideo_mc <- (p_ss_ideo_con_mc@sims[,ncol(p_ss_ideo_con_mc@sims)] - |
| p_ss_ideo_lib_mc@sims[,ncol(p_ss_ideo_lib_mc@sims)]) - |
| (p_ss_ideo_lib_mc@sims[,1] - |
| p_ss_ideo_con_mc@sims[,1]) |
|
|
| d_ss_pid_mc <- (p_ss_pid_con_mc@sims[,ncol(p_ss_pid_con_mc@sims)] - |
| p_ss_pid_lib_mc@sims[,ncol(p_ss_pid_lib_mc@sims)]) - |
| (p_ss_pid_lib_mc@sims[,1] - |
| p_ss_pid_con_mc@sims[,1]) |
|
|
| |
| d_cc_iss_mc <- (p_cc_iss_con_mc@sims[,ncol(p_cc_iss_con_mc@sims)] - |
| p_cc_iss_lib_mc@sims[,ncol(p_cc_iss_lib_mc@sims)]) - |
| (p_cc_iss_lib_mc@sims[,1] - |
| p_cc_iss_con_mc@sims[,1]) |
|
|
| d_cc_ideo_mc <- (p_cc_ideo_con_mc@sims[,ncol(p_cc_ideo_con_mc@sims)] - |
| p_cc_ideo_lib_mc@sims[,ncol(p_cc_ideo_lib_mc@sims)]) - |
| (p_cc_ideo_lib_mc@sims[,1] - |
| p_cc_ideo_con_mc@sims[,1]) |
|
|
| d_cc_pid_mc <- (p_cc_pid_con_mc@sims[,ncol(p_cc_pid_con_mc@sims)] - |
| p_cc_pid_lib_mc@sims[,ncol(p_cc_pid_lib_mc@sims)]) - |
| (p_cc_pid_lib_mc@sims[,1] - |
| p_cc_pid_con_mc@sims[,1]) |
|
|
| |
| d_names_mc <- as.data.frame(cbind(d_ss_iss_mc, d_ss_ideo_mc, d_ss_pid_mc, |
| d_cc_iss_mc, d_cc_ideo_mc, d_cc_pid_mc)) |
|
|
| dtbl_mc <- data.frame(name = colnames(d_names_mc), |
| mean = apply(d_names_mc, 2, mean), |
| ci.lo = apply(d_names_mc, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_mc, 2, quantile, probs = .975)) |
|
|
| |
|
|
| pdf("cces_figures/cces_mc_3.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,6,1,0), mar = c(4.1,1,1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_mc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4, col = "white") |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_mc$ci.lo[1:3], y1 = dtbl_mc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("white", 150)) |
|
|
| legend("topleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 3) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_mc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_mc$ci.lo[1:3], y1 = dtbl_mc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_mc$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_mc$ci.lo[4:6], y1 = dtbl_mc$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| |
| axis(1, at = -17:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = -17, x1 = -17, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| segments(x0 = -17.5, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
|
|
| ``` |
|
|
|
|
| |
|
|
| ```{r} |
|
|
| |
| data_weighted <- svydesign(~1, weights = ~teamweight, data = data_matched) |
|
|
| |
|
|
| |
| ss_ideo_lib_wb <- svyglm(goodSample ~ con_lib + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_ideo_con_wb <- svyglm(goodSample ~ con_lib + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_ideo_lib_wb <- svyglm(goodCausal ~ con_lib + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_ideo_con_wb <- svyglm(goodCausal ~ con_lib + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| ss_pid_lib_wb <- svyglm(goodSample ~ rep_dem + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_pid_con_wb <- svyglm(goodSample ~ rep_dem + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_pid_lib_wb <- svyglm(goodCausal ~ rep_dem + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_pid_con_wb <- svyglm(goodCausal ~ rep_dem + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| ss_iss_lib_wb <- svyglm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_iss_con_wb <- svyglm(goodSample ~ issue_mean_binaryCon + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_iss_lib_wb <- svyglm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_iss_con_wb <- svyglm(goodCausal ~ issue_mean_binaryCon + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| p_ss_ideo_lib_wb <- post(model = ss_ideo_lib_wb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = ss_ideo_lib_wb$priorweights) |
| p_ss_ideo_con_wb <- post(model = ss_ideo_con_wb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = ss_ideo_con_wb$priorweights) |
|
|
| p_cc_ideo_lib_wb <- post(model = cc_ideo_lib_wb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = cc_ideo_lib_wb$priorweights) |
| p_cc_ideo_con_wb <- post(model = cc_ideo_con_wb, x1name = "con_lib", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = cc_ideo_con_wb$priorweights) |
|
|
| p_ss_pid_lib_wb <- post(model = ss_pid_lib_wb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = ss_pid_lib_wb$priorweights) |
| p_ss_pid_con_wb <- post(model = ss_pid_con_wb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = ss_pid_con_wb$priorweights) |
|
|
| p_cc_pid_lib_wb <- post(model = cc_pid_lib_wb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = cc_pid_lib_wb$priorweights) |
| p_cc_pid_con_wb <- post(model = cc_pid_con_wb, x1name = "rep_dem", x1vals = c(0, 1), |
| n.sims = nsims, digits = 5, weights = cc_pid_con_wb$priorweights) |
|
|
| p_ss_iss_lib_wb <- post(model = ss_iss_lib_wb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5, |
| weights = ss_iss_lib_wb$priorweights) |
| p_ss_iss_con_wb <- post(model = ss_iss_con_wb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5, |
| weights = ss_iss_con_wb$priorweights) |
|
|
| p_cc_iss_lib_wb <- post(model = cc_iss_lib_wb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5, |
| weights = cc_iss_lib_wb$priorweights) |
| p_cc_iss_con_wb <- post(model = cc_iss_con_wb, x1name = "issue_mean_binaryCon", |
| x1vals = c(0, 1), n.sims = nsims, digits = 5, |
| weights = cc_iss_con_wb$priorweights) |
|
|
| |
| |
|
|
| |
|
|
| pdf("cces_figures/cces_wb_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_iss_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_iss_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_iss_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_iss_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_lib_wb@est[1:2,2], |
| y1 = p_ss_iss_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_iss_con_wb@est[1:2,2], |
| y1 = p_ss_iss_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| legend(.5, 1, legend = c("Left", "Right"), |
| lty = 1, lwd = 4, col = c(makeTransparent("deepskyblue3"), "firebrick2"), |
| pch = 16, |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_ideo_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_ideo_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_ideo_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_ideo_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_lib_wb@est[1:2,2], |
| y1 = p_ss_ideo_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_ideo_con_wb@est[1:2,2], |
| y1 = p_ss_ideo_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.5, .5), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 2) |
|
|
| points(0:1, p_ss_pid_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_ss_pid_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_ss_pid_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_ss_pid_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_lib_wb@est[1:2,2], |
| y1 = p_ss_pid_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_ss_pid_con_wb@est[1:2,2], |
| y1 = p_ss_pid_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_wb_2.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1.1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_iss_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_iss_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_iss_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_iss_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_lib_wb@est[1:2,2], |
| y1 = p_cc_iss_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_iss_con_wb@est[1:2,2], |
| y1 = p_cc_iss_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_ideo_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_ideo_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_ideo_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_ideo_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_lib_wb@est[1:2,2], |
| y1 = p_cc_ideo_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_ideo_con_wb@est[1:2,2], |
| y1 = p_cc_ideo_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(-.20, 1.20), ylim = c(-.7, .7), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| axis(1, at = c(0, 1), labels = c("L", "R"), cex.axis = 1.5) |
|
|
| points(0:1, p_cc_pid_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| cex = 3) |
| points(0:1, p_cc_pid_con_wb@est[1:2,1], pch = 15, col = "firebrick2", cex = 3) |
|
|
| points(0:1, p_cc_pid_lib_wb@est[1:2,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| type = "l", lwd = 2, lty = 2) |
| points(0:1, p_cc_pid_con_wb@est[1:2,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 2, lty = 2) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_lib_wb@est[1:2,2], |
| y1 = p_cc_pid_lib_wb@est[1:2,3], |
| col = makeTransparent("deepskyblue3"), lwd = 5) |
| segments(x0 = c(0, 1), x1 = c(0, 1), |
| y0 = p_cc_pid_con_wb@est[1:2,2], |
| y1 = p_cc_pid_con_wb@est[1:2,3], |
| col = makeTransparent("firebrick2"), lwd = 5) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_wb <- (p_ss_iss_con_wb@sims[,ncol(p_ss_iss_con_wb@sims)] - |
| p_ss_iss_lib_wb@sims[,ncol(p_ss_iss_lib_wb@sims)]) - |
| (p_ss_iss_lib_wb@sims[,1] - |
| p_ss_iss_con_wb@sims[,1]) |
|
|
| d_ss_ideo_wb <- (p_ss_ideo_con_wb@sims[,ncol(p_ss_ideo_con_wb@sims)] - |
| p_ss_ideo_lib_wb@sims[,ncol(p_ss_ideo_lib_wb@sims)]) - |
| (p_ss_ideo_lib_wb@sims[,1] - |
| p_ss_ideo_con_wb@sims[,1]) |
|
|
| d_ss_pid_wb <- (p_ss_pid_con_wb@sims[,ncol(p_ss_pid_con_wb@sims)] - |
| p_ss_pid_lib_wb@sims[,ncol(p_ss_pid_lib_wb@sims)]) - |
| (p_ss_pid_lib_wb@sims[,1] - |
| p_ss_pid_con_wb@sims[,1]) |
|
|
| |
| d_cc_iss_wb <- (p_cc_iss_con_wb@sims[,ncol(p_cc_iss_con_wb@sims)] - |
| p_cc_iss_lib_wb@sims[,ncol(p_cc_iss_lib_wb@sims)]) - |
| (p_cc_iss_lib_wb@sims[,1] - |
| p_cc_iss_con_wb@sims[,1]) |
|
|
| d_cc_ideo_wb <- (p_cc_ideo_con_wb@sims[,ncol(p_cc_ideo_con_wb@sims)] - |
| p_cc_ideo_lib_wb@sims[,ncol(p_cc_ideo_lib_wb@sims)]) - |
| (p_cc_ideo_lib_wb@sims[,1] - |
| p_cc_ideo_con_wb@sims[,1]) |
|
|
| d_cc_pid_wb <- (p_cc_pid_con_wb@sims[,ncol(p_cc_pid_con_wb@sims)] - |
| p_cc_pid_lib_wb@sims[,ncol(p_cc_pid_lib_wb@sims)]) - |
| (p_cc_pid_lib_wb@sims[,1] - |
| p_cc_pid_con_wb@sims[,1]) |
| |
| |
|
|
| |
| d_names_wb <- as.data.frame(cbind(d_ss_iss_wb, d_ss_ideo_wb, d_ss_pid_wb, |
| d_cc_iss_wb, d_cc_ideo_wb, d_cc_pid_wb)) |
|
|
| dtbl_wb <- data.frame(name = colnames(d_names_wb), |
| mean = apply(d_names_wb, 2, mean), |
| ci.lo = apply(d_names_wb, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_wb, 2, quantile, probs = .975)) |
|
|
| pdf("cces_figures/cces_wb_3.pdf", height = 6, width = 8) |
|
|
| |
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_wb$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_wb$ci.lo[1:3], y1 = dtbl_wb$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = 0, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
|
|
| |
| pdf("cces_figures/cces_wb_4.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,1), oma = c(.1,6,1,0), mar = c(4.1,1,1.1,1), xpd = NA) |
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_wb$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_wb$ci.lo[4:6], y1 = dtbl_wb$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| legend("bottomleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 2) |
|
|
| |
| axis(1, at = 0:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = 0, x1 = 0, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| |
| segments(x0 = 0, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| dev.off() |
| |
| ``` |
|
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| |
|
|
| ```{r} |
|
|
| |
|
|
| |
| ss_ideo_lib_wc <- svyglm(goodSample ~ ideo7 + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_ideo_con_wc <- svyglm(goodSample ~ ideo7 + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_ideo_lib_wc <- svyglm(goodCausal ~ ideo7 + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_ideo_con_wc <- svyglm(goodCausal ~ ideo7 + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| ss_pid_lib_wc <- svyglm(goodSample ~ pid7 + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_pid_con_wc <- svyglm(goodSample ~ pid7 + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_pid_lib_wc <- svyglm(goodCausal ~ pid7 + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_pid_con_wc <- svyglm(goodCausal ~ pid7 + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| ss_iss_lib_wc <- svyglm(goodSample ~ issue_mean + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| ss_iss_con_wc <- svyglm(goodSample ~ issue_mean + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| cc_iss_lib_wc <- svyglm(goodCausal ~ issue_mean + cond_issue, |
| subset(data_weighted, finding_lr == 1)) |
| cc_iss_con_wc <- svyglm(goodCausal ~ issue_mean + cond_issue, |
| subset(data_weighted, finding_lr == 0)) |
|
|
| |
| p_ss_ideo_lib_wc <- post(model = ss_ideo_lib_wc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = ss_ideo_lib_wc$priorweights) |
| p_ss_ideo_con_wc <- post(model = ss_ideo_con_wc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = ss_ideo_con_wc$priorweights) |
|
|
| p_cc_ideo_lib_wc <- post(model = cc_ideo_lib_wc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = cc_ideo_lib_wc$priorweights) |
| p_cc_ideo_con_wc <- post(model = cc_ideo_con_wc, x1name = "ideo7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = cc_ideo_con_wc$priorweights) |
|
|
| p_ss_pid_lib_wc <- post(model = ss_pid_lib_wc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = ss_pid_lib_wc$priorweights) |
| p_ss_pid_con_wc <- post(model = ss_pid_con_wc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = ss_pid_con_wc$priorweights) |
|
|
| p_cc_pid_lib_wc <- post(model = cc_pid_lib_wc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = cc_pid_lib_wc$priorweights) |
| p_cc_pid_con_wc <- post(model = cc_pid_con_wc, x1name = "pid7", x1vals = 1:7, |
| n.sims = nsims, digits = 5, weights = cc_pid_con_wc$priorweights) |
|
|
| p_ss_iss_lib_wc <- post(model = ss_iss_lib_wc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5, weights = ss_iss_lib_wc$priorweights) |
| p_ss_iss_con_wc <- post(model = ss_iss_con_wc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5, weights = ss_iss_con_wc$priorweights) |
|
|
| p_cc_iss_lib_wc <- post(model = cc_iss_lib_wc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5, weights = cc_iss_lib_wc$priorweights) |
| p_cc_iss_con_wc <- post(model = cc_iss_con_wc, x1name = "issue_mean", seq(0,1,.1), |
| n.sims = nsims, digits = 5, weights = cc_iss_con_wc$priorweights) |
|
|
|
|
| |
| |
|
|
| |
| pdf("cces_figures/cces_wc_1.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(seq(0,1,.1), p_ss_iss_lib_wc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_ss_iss_con_wc@est[1:11,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_lib_wc@est[1:11,2], rev(p_ss_iss_lib_wc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_ss_iss_con_wc@est[1:11,2], rev(p_ss_iss_con_wc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| legend(0, 1, legend = c("Left", "Right"), |
| lty = c(2,1), lwd = 4, col = c(makeTransparent("deepskyblue3"), "firebrick2"), |
| bty = "n", cex = 2, title = "Evidence:") |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_ideo_lib_wc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, |
| type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_ideo_con_wc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_lib_wc@est[1:7,2], rev(p_ss_ideo_lib_wc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_ideo_con_wc@est[1:7,2], rev(p_ss_ideo_con_wc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Sample Size is Sufficient (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Sample Size is Sufficient (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_ss_pid_lib_wc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_ss_pid_con_wc@est[1:7,1], pch = 15, col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_lib_wc@est[1:7,2], rev(p_ss_pid_lib_wc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_ss_pid_con_wc@est[1:7,2], rev(p_ss_pid_con_wc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| pdf("cces_figures/cces_wc_2.pdf", height = 6, width = 8) |
|
|
| par(mfrow = c(1,3), oma = c(.1,5,1,0), mar = c(4.1,1,1,1)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Ideology", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_ideo_lib_wc@est[1:7,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_ideo_con_wc@est[1:7,1], pch = 15, |
| col = "firebrick2", type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_lib_wc@est[1:7,2], rev(p_cc_ideo_lib_wc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_ideo_con_wc@est[1:7,2], rev(p_cc_ideo_con_wc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| mtext("Can Make Causal Claim (in SDs)", side = 2, outer = T, padj = -2, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(1,7), ylim = c(-1, 1), |
| xlab = "Party ID", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
|
|
| points(1:7, p_cc_pid_lib_wc@est[1:7,1], pch = 16, col = makeTransparent("deepskyblue3"), |
| lty = 2, type = "l", lwd = 4) |
|
|
| points(1:7, p_cc_pid_con_wc@est[1:7,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_lib_wc@est[1:7,2], rev(p_cc_pid_lib_wc@est[1:7,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(1,7,1), rev(seq(1,7,1))), |
| c(p_cc_pid_con_wc@est[1:7,2], rev(p_cc_pid_con_wc@est[1:7,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| |
| seq(0,1,.1) |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,1), ylim = c(-1, 1), |
| xlab = "Issue Position", |
| ylab = "Can Make Causal Claim (in SDs)", cex.lab = 2, cex.axis = 1.7) |
| length(seq(0,1,.1)) |
| points(seq(0,1,.1), p_cc_iss_lib_wc@est[1:11,1], pch = 16, |
| col = makeTransparent("deepskyblue3"), lty = 2, type = "l", lwd = 4) |
|
|
| points(seq(0,1,.1), p_cc_iss_con_wc@est[1:11,1], pch = 15, col = "firebrick2", |
| type = "l", lwd = 4) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_lib_wc@est[1:11,2], rev(p_cc_iss_lib_wc@est[1:11,3])), |
| col= adjustcolor("deepskyblue3", .1), border=NA) |
|
|
| polygon(c(seq(0,1,.1), rev(seq(0,1,.1))), |
| c(p_cc_iss_con_wc@est[1:11,2], rev(p_cc_iss_con_wc@est[1:11,3])), |
| col= adjustcolor("firebrick2", .1), border=NA) |
|
|
| dev.off() |
|
|
| |
|
|
| |
| d_ss_iss_wc <- (p_ss_iss_con_wc@sims[,ncol(p_ss_iss_con_wc@sims)] - |
| p_ss_iss_lib_wc@sims[,ncol(p_ss_iss_lib_wc@sims)]) - |
| (p_ss_iss_lib_wc@sims[,1] - |
| p_ss_iss_con_wc@sims[,1]) |
|
|
| d_ss_ideo_wc <- (p_ss_ideo_con_wc@sims[,ncol(p_ss_ideo_con_wc@sims)] - |
| p_ss_ideo_lib_wc@sims[,ncol(p_ss_ideo_lib_wc@sims)]) - |
| (p_ss_ideo_lib_wc@sims[,1] - |
| p_ss_ideo_con_wc@sims[,1]) |
|
|
| d_ss_pid_wc <- (p_ss_pid_con_wc@sims[,ncol(p_ss_pid_con_wc@sims)] - |
| p_ss_pid_lib_wc@sims[,ncol(p_ss_pid_lib_wc@sims)]) - |
| (p_ss_pid_lib_wc@sims[,1] - |
| p_ss_pid_con_wc@sims[,1]) |
|
|
| |
| d_cc_iss_wc <- (p_cc_iss_con_wc@sims[,ncol(p_cc_iss_con_wc@sims)] - |
| p_cc_iss_lib_wc@sims[,ncol(p_cc_iss_lib_wc@sims)]) - |
| (p_cc_iss_lib_wc@sims[,1] - |
| p_cc_iss_con_wc@sims[,1]) |
|
|
| d_cc_ideo_wc <- (p_cc_ideo_con_wc@sims[,ncol(p_cc_ideo_con_wc@sims)] - |
| p_cc_ideo_lib_wc@sims[,ncol(p_cc_ideo_lib_wc@sims)]) - |
| (p_cc_ideo_lib_wc@sims[,1] - |
| p_cc_ideo_con_wc@sims[,1]) |
|
|
| d_cc_pid_wc <- (p_cc_pid_con_wc@sims[,ncol(p_cc_pid_con_wc@sims)] - |
| p_cc_pid_lib_wc@sims[,ncol(p_cc_pid_lib_wc@sims)]) - |
| (p_cc_pid_lib_wc@sims[,1] - |
| p_cc_pid_con_wc@sims[,1]) |
|
|
| |
| d_names_wc <- as.data.frame(cbind(d_ss_iss_wc, d_ss_ideo_wc, d_ss_pid_wc, |
| d_cc_iss_wc, d_cc_ideo_wc, d_cc_pid_wc)) |
|
|
| dtbl_wc <- data.frame(name = colnames(d_names_wc), |
| mean = apply(d_names_wc, 2, mean), |
| ci.lo = apply(d_names_wc, 2, quantile, probs = .025), |
| ci.hi = apply(d_names_wc, 2, quantile, probs = .975)) |
|
|
| |
|
|
| pdf("cces_figures/cces_wc_3.pdf", height = 6, width = 8) |
| par(mfrow = c(1,3), oma = c(.1,6,1,0), mar = c(4.1,1,1,1), xpd = NA) |
|
|
| x_vals <- c(1,3,5) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, xaxt = "n") |
|
|
| points(x_vals, dtbl_wc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4, col = "white") |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_wc$ci.lo[1:3], y1 = dtbl_wc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("white", 150)) |
|
|
| legend("topleft", legend = c("Issue Position", "Ideology", "Party ID"), |
| pch = c(15, 16, 17), |
| bty = "n", cex = 3) |
|
|
| mtext("(Conservative - Liberal)", side = 2, outer = T, padj = -1.8, cex = 1.7) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Sample Size", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_wc$mean[1:3], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_wc$ci.lo[1:3], y1 = dtbl_wc$ci.hi[1:3], |
| lwd = 5, col = makeTransparent("black", 150)) |
|
|
| |
| plot(1,1, col = "white", bty = "n", |
| xlim = c(0,7), ylim = c(-1,1), |
| xlab = "Causal Claim", |
| ylab = "", cex.lab = 2, cex.axis = 1.7, yaxt = "n", xaxt = "n") |
|
|
| points(x_vals, dtbl_wc$mean[4:6], pch = c(15, 16, 17), |
| cex = 4) |
| segments(x0 = x_vals, x1 = x_vals, |
| y0 = dtbl_wc$ci.lo[4:6], y1 = dtbl_wc$ci.hi[4:6], |
| lwd = 5, col = makeTransparent("black", 150) ) |
|
|
| |
| axis(1, at = -17:6, lwd.tick=0, labels=FALSE) |
|
|
| segments(x0 = -17, x1 = -17, |
| y0 = -1.08, y1 = -1.12) |
| segments(x0 = 6, x1 = 6, |
| y0 = -1.08, y1 = -1.12) |
|
|
| segments(x0 = -17.5, x1 = 6, |
| y0 = 0, y1 = 0, lty = 2) |
|
|
| dev.off() |
|
|
|
|
| sink() |
| ``` |
|
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|