# Replication File for Appendix: Survey Analysis # Appendix D2 Figure D2: Replicate Figure 3 with only among anti-refugees # Appendix D3 Figure D3: Variables Predicting Mate Competition vs. Other Views About Refugees # Appendix D4 Figures D.4.1 and D.4.2: Replicate Figure 4 with wave 1 # Appendix D5 Table D.5: Table representation of Figure 5 # Appendix D6 Table D.6.1, Figure.6.2, Table.D.6.3, Table.D.6.4 # Appendix D8 Table D.8.1: Robustness Check with YouGov Survey Data # R version 4.0.2 (2020-06-22) # ################## # Data Preparation # ################## rm(list=ls()) # install.packages("readstata13") # readstata13_0.9.2 # install.packages("MASS") # MASS_7.3-51.6 # install.packages("sandwich") # sandwich_2.5-1 # install.packages("lmtest") # lmtest_0.9-37 # install.packages("stargazer") # stargazer_5.2.2 # install.packages("foreign") # foreign_0.8-80 # install.packages("list") # list_9.2 require(readstata13) # readstata13_0.9.2 require(MASS) # MASS_7.3-51.6 require(sandwich) # sandwich_2.5-1 require(lmtest) # lmtest_0.9-37 require(stargazer) # stargazer_5.2.2 require(foreign) # foreign_0.8-80 require(list) # list_9.2 source("Help.R") dat <- read.dta13(file = "survey.dta") # Subset to people who pass the check dat_use <- dat[dat$wave == 4, ] ## ############################### ## 1: Appendix D2 Figure D2 ## ############################### # Replicate only among anti-refugee quantile(dat_use$refugee_ind, probs = 0.75) dat_use_r <- dat_use[dat_use$refugee_ind > 0.875, ] dat_use_r$MateComp.cont_bin <- ifelse(dat_use_r$MateComp.cont >= 3, 1, 0) dat_use_r$excess_c <- ifelse(dat_use_r$pop_15_44_muni_gendergap_2015 < 1.04, "1", ifelse(dat_use_r$pop_15_44_muni_gendergap_2015 < 1.12, "2", "3")) dat_male_r <- dat_use_r[dat_use_r$gender == "Male" & dat_use_r$age <= 44 & dat_use_r$age >= 18, ] dat_male_y_r <- dat_use_r[dat_use_r$gender == "Male" & dat_use_r$age <= 40 & dat_use_r$age >= 30, ] mean_all_r <- tapply(dat_use_r$MateComp.cont_bin, dat_use_r$excess_c, mean) se_all_r <- tapply(dat_use_r$MateComp.cont_bin, dat_use_r$excess_c, sd)/sqrt(table(dat_use_r$excess_c)) mean_all_m_r <- tapply(dat_male_r$MateComp.cont_bin, dat_male_r$excess_c, mean) se_all_m_r <- tapply(dat_male_r$MateComp.cont_bin, dat_male_r$excess_c, sd)/sqrt(table(dat_male_r$excess_c)) mean_all_y_r <- tapply(dat_male_y_r$MateComp.cont_bin, dat_male_y_r$excess_c, mean) se_all_y_r <- tapply(dat_male_y_r$MateComp.cont_bin, dat_male_y_r$excess_c, sd)/sqrt(table(dat_male_y_r$excess_c)) pdf("figure_D2.pdf", height= 6, width = 17.5) par(mfrow = c(1, 3), mar = c(2,2,3,2), oma = c(4,4,0,0)) plot(seq(1:3), mean_all_r, pch = 19, ylim = c(0, 1), xlim = c(0.5, 3.5), main = "All", xaxt = "n", xlab = "", ylab = "", cex.axis = 2.25, cex.main = 2.5, cex = 2.25, cex.lab = 2.5) segments(seq(1:3), mean_all_r - 1.96*se_all_r, seq(1:3), mean_all_r + 1.96*se_all_r, pch = 19, lwd = 3) Axis(side = 1, at = c(1,2,3), labels = c("1st tercile", "2nd tercile", "3rd tercile"), cex.axis = 2.25) plot(seq(1:3), mean_all_m_r, pch = 19, ylim = c(0, 1), xlim = c(0.5, 3.5), main = "Male (18-44)", xaxt = "n", xlab = "", ylab = "", cex.axis = 2.25, cex.main = 2.5, cex = 2.25, cex.lab = 2.5) segments(seq(1:3), mean_all_m_r - 1.96*se_all_m_r, seq(1:3), mean_all_m_r + 1.96*se_all_m_r, pch = 19, lwd = 3) Axis(side = 1, at = c(1,2,3), labels = c("1st tercile", "2nd tercile", "3rd tercile"), cex.axis = 2.25) plot(seq(1:3), mean_all_y_r, pch = 19, ylim = c(0, 1), xlim = c(0.5, 3.5), main = "Male (30 - 40)", xaxt = "n", xlab = "", ylab = "", cex.axis = 2.25, cex.main = 2.5, cex = 2.25, cex.lab = 2.5) segments(seq(1:3), mean_all_y_r - 1.96*se_all_y_r, seq(1:3), mean_all_y_r + 1.96*se_all_y_r, pch = 19, lwd = 3) Axis(side = 1, at = c(1,2,3), labels = c("1st tercile", "2nd tercile", "3rd tercile"), cex.axis = 2.25) mtext("Proportion Perceiving Mate Competition", side = 2, outer = TRUE, at = 0.5, cex = 1.5, line = 1.75) mtext("Excess Males", side = 1, outer = TRUE, at = 0.175, cex = 1.5, line = 1.75) mtext("Excess Males", side = 1, outer = TRUE, at = 0.5, cex = 1.5, line = 1.75) mtext("Excess Males", side = 1, outer = TRUE, at = 0.825, cex = 1.5, line = 1.75) dev.off() ## ############################### ## 2: Appendix D3 Figure D3 ## ############################### # Coefficients of Male x Single on Refugee Variables rm(list=ls()) dat <- read.dta13(file = "survey.dta") dat_use <- dat[dat$wave == 4, ] source("Help.R") dat_use$male <- as.numeric(dat_use$gender == "Male") # outcomes we want to analyze outcome_ref <- c("MateComp.cont", "JobComp.cont", "ref_integrating", "ref_citizenship","ref_reduce","ref_moredone", "ref_cultgiveup", "ref_economy", "ref_crime", "ref_terror", "ref_loc_services", "ref_loc_economy", "ref_loc_crime", "ref_loc_culture", "ref_loc_islam", "ref_loc_schools", "ref_loc_housing", "ref_loc_wayoflife") outcome_ref_name <- c("Mate competition", "Job competition", "Integration", "Citizenship for refugees","Number of refugees","More for refugees", "Culture", "Economy", "Crime", "Terrorism", "Local social services", "Local economy", "Local crime", "Local culture", "Islam", "Local school", "Housing", "Living") # Fit Ordered Logit lm_l <- list() lm_out <- list() male_mat <- sing_mat <- int_mat <- matrix(NA, nrow = 18, ncol = 2) for(i in 1:18){ control <- paste(outcome_ref[-i], collapse = "+") for_i <- paste("as.factor(", outcome_ref[i],")", "~ male*singdivsep + ", control, sep = "") lm_l[[i]] <- polr(for_i, data = dat_use, Hess = TRUE) lm_out[[i]] <- summary(lm_l[[i]])$coef male_mat[i, 1:2] <- summary(lm_l[[i]])$coef["male", 1:2] sing_mat[i, 1:2] <- summary(lm_l[[i]])$coef["singdivsep", 1:2] int_mat[i, 1:2] <- summary(lm_l[[i]])$coef["male:singdivsep", 1:2] } rownames(int_mat) <- outcome_ref # Fit linear regression lm2_l <- list() lm2_out <- list() male_mat2 <- sing_mat2 <- int_mat2 <- matrix(NA, nrow = 18, ncol = 2) for(i in 1:18){ control <- paste(outcome_ref[-i], collapse = "+") for_i <- paste(outcome_ref[i], "~ male*singdivsep + ", control, sep = "") lm2_l[[i]] <- lm(for_i, data = dat_use) lm2_out[[i]] <- summary(lm2_l[[i]])$coef male_mat2[i, 1:2] <- summary(lm2_l[[i]])$coef["male", 1:2] sing_mat2[i, 1:2] <- summary(lm2_l[[i]])$coef["singdivsep", 1:2] int_mat2[i, 1:2] <- summary(lm2_l[[i]])$coef["male:singdivsep", 1:2] } rownames(int_mat2) <- outcome_ref # Show Coefficients for Male x Single Interaction (after controlling for other refugee variables) # Both Ordered Logit and Linear regression col_p <- rev(c("red", rep("black", 17))) pdf("figure_D3_1.pdf", height = 6, width = 8) par(mfrow = c(1, 2), mar = c(4, 2, 4, 1), oma = c(1, 10, 2, 2)) plot(rev(int_mat[,1]), seq(1:18), pch = 19, xlim = c(-0.6, 1.0), ylim = c(1, 18), xlab = "Coefficients", ylab = "", yaxt = "n", main = "Ordered logit", col = col_p) segments(rev(int_mat[,1]) - 1.96*rev(int_mat[,2]), seq(1:18), rev(int_mat[,1]) + 1.96*rev(int_mat[,2]), seq(1:18), col = col_p) abline(v = 0, lty = 2) plot(rev(int_mat2[,1]), seq(1:18), pch = 19, xlim = c(-0.3, 0.3), ylim = c(1, 18), xlab = "Coefficients", ylab = "", yaxt = "n", main = "Linear regression", col = col_p) segments(rev(int_mat2[,1]) - 1.96*rev(int_mat2[,2]), seq(1:18), rev(int_mat2[,1]) + 1.96*rev(int_mat2[,2]), seq(1:18), col = col_p) abline(v = 0, lty = 2) Axis(side = 2, at = seq(1:18), labels = rev(outcome_ref_name), las = 1, tick = 0, outer = TRUE, hadj = 0, line = 7.5) mtext(side = 3, at = 0.5, text = "Coefficients of Male x Single", cex = 1.5, font = 2, outer = TRUE) dev.off() # ###################################### # Coefficients of Women's Role on Mate Competition # ###################################### # Ordered Logit lm_l <- list() lm_out <- list() role_mat <- matrix(NA, nrow = 18, ncol = 2) for(i in 1:18){ control <- paste(outcome_ref[-i], collapse = "+") for_i <- paste("as.factor(", outcome_ref[i], ")", "~ women_role + ", control, sep = "") lm_l[[i]] <- polr(for_i, data = dat_use, Hess = TRUE) lm_out[[i]] <- summary(lm_l[[i]])$coef role_mat[i, 1:2] <- summary(lm_l[[i]])$coef["women_role", 1:2] } rownames(role_mat) <- outcome_ref # OLS lm_l2 <- list() lm_out2 <- list() role_mat2 <- matrix(NA, nrow = 18, ncol = 2) for(i in 1:18){ control <- paste(outcome_ref[-i], collapse = "+") for_i <- paste(outcome_ref[i], "~ women_role + ", control, sep = "") lm_l2[[i]] <- lm(for_i, data = dat_use) lm_out2[[i]] <- summary(lm_l2[[i]])$coef role_mat2[i, 1:2] <- summary(lm_l2[[i]])$coef["women_role", 1:2] } rownames(role_mat2) <- outcome_ref pdf("figure_D3_2.pdf", height = 6, width = 8) par(mfrow = c(1, 2), mar = c(4, 2, 4, 1), oma = c(1, 10, 2, 2)) plot(rev(role_mat[,1]), seq(1:18), pch = 19, xlim = c(-0.3, 0.6), ylim = c(1, 18), xlab = "Coefficients", ylab = "", yaxt = "n", main = "Ordered logit", col = col_p) segments(rev(role_mat[,1]) - 1.96*rev(role_mat[,2]), seq(1:18), rev(role_mat[,1]) + 1.96*rev(role_mat[,2]), seq(1:18), col = col_p) abline(v = 0, lty = 2) plot(rev(role_mat2[,1]), seq(1:18), pch = 19, xlim = c(-0.1, 0.15), ylim = c(1, 18), xlab = "Coefficients", ylab = "", yaxt = "n", main = "Linear regression", col = col_p) segments(rev(role_mat2[,1]) - 1.96*rev(role_mat2[,2]), seq(1:18), rev(role_mat2[,1]) + 1.96*rev(role_mat2[,2]), seq(1:18), col = col_p) abline(v = 0, lty = 2) Axis(side = 2, at = seq(1:18), labels = rev(outcome_ref_name), las = 1, tick = 0, outer = TRUE, hadj = 0, line = 7.5) mtext(side = 3, at = 0.5, text = "Coefficients of Women's Role", cex = 1.5, font = 2, outer = TRUE) dev.off() ## ################################### ## Appendix D4: Figure D.4.1 & D.4.2 ## ################################### # Replicate Figure 3 with Wave 1 data.u1 <- dat[dat$wave == 1, ] data.u1$List.treat <- ifelse(data.u1$treatment_list == "Scenario 2", 1, 0) # Difference-in-Means (0.12618) # Message (hate_pol_message): # Attacks against refugee homes are sometimes necessary to make it clear to politicians that we have a refugee problem diff.in.means.results <- ictreg(outcome_list ~ 1, data = data.u1, treat = "List.treat", J = 3, method = "lm") summary(diff.in.means.results) data.u1$means_bin <- ifelse(data.u1$hate_violence_means >= 3, 1, 0) data.u1$condemn_bin <- ifelse(data.u1$hate_polcondemn >= 3, 1, 0) data.u1$justified_bin <- ifelse(data.u1$hate_justified >= 3, 1, 0) only.mean <- mean(data.u1$means_bin) condemn.mean <- mean(data.u1$condemn_bin) justified.mean <- mean(data.u1$justified_bin) only.se <- sd(data.u1$means_bin)/sqrt(length(data.u1$means_bin)) condemn.se <- sd(data.u1$condemn_bin)/sqrt(length(data.u1$condemn_bin)) justified.se <- sd(data.u1$justified_bin)/sqrt(length(data.u1$justified_bin)) # plot different questions within the same wave point <- c(summary(diff.in.means.results)$par.treat, only.mean, condemn.mean, justified.mean) se_p <- c(summary(diff.in.means.results)$se.treat, only.se, condemn.se, justified.se) base <- barplot(point, ylim = c(0, 0.20)) bar_name_u <- c("Message (List)", "Only Means", "Condemn", "Justified") bar_name <- rep("",4) # Figure D.4.1 pdf("figure_D4_1.pdf", height = 4.5, width = 8) par(mar = c(4, 5, 2, 1)) barplot(point, ylim = c(0, 0.3), names.arg = bar_name, col = c(adjustcolor("red", 0.4), "gray", "gray", "gray"), cex.axis = 1.3) arrows(base[,1], point - 1.96*se_p, base[,1], point + 1.96*se_p, lwd = 3, angle = 90, length = 0.05, code = 3, col = c("red", "black", "black", "black")) mtext(bar_name_u[1], outer = FALSE, side = 1, at = base[1], cex = 1.2, line = 2.4) mtext(bar_name_u[2], outer = FALSE, side = 1, at = base[2], cex = 1.2, line = 2.4) mtext(bar_name_u[3], outer = FALSE, side = 1, at = base[3], cex = 1.2, line = 2.4) mtext(bar_name_u[4], outer = FALSE, side = 1, at = base[4], cex = 1.2, line = 2.4) text(x = base[1], y = 0.28, "Estimate from \nList Experiment", col = "red", font = 2) text(x = base[3], y = 0.28, "Direct Questions", font = 2) dev.off() ## "Message" across Waves data.u1 <- dat[dat$wave == 1, ] data.u2 <- dat[dat$wave == 2, ] data.u3 <- dat[dat$wave == 3, ] data.u4 <- dat[dat$wave == 4, ] dat_all <- rbind(data.u1, data.u2, data.u3, data.u4) dat_all$hate_pol_message_bin <- ifelse(dat_all$hate_pol_message >=3, 1, 0) message_direct <- tapply(dat_all$hate_pol_message_bin, dat_all$wave, mean, na.rm = TRUE)[c(2,3,4)] message_direct_num <- tapply(dat_all$hate_pol_message_bin, dat_all$wave, function(x) sum(is.na(x)==FALSE))[c(2,3,4)] message_direct_se <- tapply(dat_all$hate_pol_message_bin, dat_all$wave, sd, na.rm = TRUE)[c(2,3,4)]/sqrt(message_direct_num) # plot The same question over time point <- c(summary(diff.in.means.results)$par.treat, message_direct) se_p <- c(summary(diff.in.means.results)$se.treat, message_direct_se) base <- barplot(point, ylim = c(0, 0.20)) bar_name_u <- c("Message \n(List)", "Message \n(Direct, Wave 2)", "Message \n(Direct, Wave 3)", "Message \n(Direct, Wave 4)") bar_name <- rep("",4) # Figure D.4.2 pdf("figure_D4_2.pdf", height = 4.5, width = 8) par(mar = c(4, 5, 2, 1)) barplot(point, ylim = c(0, 0.25), names.arg = bar_name, col = c(adjustcolor("red", 0.4), "gray", "gray", "gray"), cex.axis = 1.3, ylab = "Proportion of respondents", cex.lab = 1.45) arrows(base[,1], point - 1.96*se_p, base[,1], point + 1.96*se_p, lwd = 3, angle = 90, length = 0.05, code = 3, col = c("red", "black", "black", "black")) mtext(bar_name_u[1], outer = FALSE, side = 1, at = base[1], cex = 1.2, line = 2.4) mtext(bar_name_u[2], outer = FALSE, side = 1, at = base[2], cex = 1.2, line = 2.4) mtext(bar_name_u[3], outer = FALSE, side = 1, at = base[3], cex = 1.2, line = 2.4) mtext(bar_name_u[4], outer = FALSE, side = 1, at = base[4], cex = 1.2, line = 2.4) text(x = base[1], y = 0.225, "Estimate from \nList Experiment", col = "red", font = 2) text(x = base[3], y = 0.225, "Direct Questions", font = 2) dev.off() # ############################# # Appendix D5 Table D5 # ############################# formula.5 <- as.character("hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + factor(gender) + factor(state) + factor(citizenship) + factor(marital) + factor(religion) + eduyrs + factor(occupation) + factor(income) + factor(household_size) + factor(self_econ) + factor(ref_integrating) + factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror) + factor(ref_loc_services) + factor(ref_loc_economy) + factor(ref_loc_crime) + factor(ref_loc_culture) + factor(ref_loc_islam) + factor(ref_loc_schools) + factor(ref_loc_housing) + factor(ref_loc_wayoflife)") formula.6 <- paste(formula.5, "factor(distance_ref) + factor(settle_ref)", "lrscale + afd + muslim_ind + afd_ind + contact_ind", sep="+", collapse="+") # with Difference Outcomes # hate_pol_message : "82. Support for Hate Crime_Attacks against refugee homes are somet" # hate_prevent_settlement : "82. Support for Hate Crime_Racist violence is defensible if it lea" # hate_polcondemn : "82. Support for Hate Crime_Politicians should condemn attacks agai" # hate_justified: "82. Support for Hate Crime_Hostility against foreigners is sometimes justified" formula.7.means <- paste("hate_violence_means ~ ", as.character(as.formula(formula.6))[3], sep = "") formula.7.message <- paste("hate_pol_message ~", as.character(as.formula(formula.6))[3], sep = "") formula.7.prevent <- paste("hate_prevent_settlement ~", as.character(as.formula(formula.6))[3], sep = "") formula.7.condemn <- paste("hate_polcondemn ~ ", as.character(as.formula(formula.6))[3], sep = "") formula.7.justified <- paste("hate_justified ~ ", as.character(as.formula(formula.6))[3], sep = "") # output lm7.means <- lm(as.formula(formula.7.means), data=dat_use) lm7.justified <- lm(as.formula(formula.7.justified), data=dat_use) lm7.message <- lm(as.formula(formula.7.message), data=dat_use) lm7.prevent <- lm(as.formula(formula.7.prevent), data=dat_use) lm7.condemn <- lm(as.formula(formula.7.condemn), data=dat_use) ## Table D.5 (in Appendix D.5) lm.list_d <- list(lm7.means, lm7.justified, lm7.message, lm7.prevent, lm7.condemn) star_out(stargazer(lm.list_d, covariate.labels = c("Mate Competition","Job Competition","Life Satisfaction"), keep=c("MateComp.cont","JobComp.cont","LifeSatis.cont")), name = "table_D5_1.tex") ## ################################## ## Table D.5.2 (appendix) with East/West ## ################################## rm(list=ls()) # Set the directly appropriately dat <- read.dta13(file = "survey.dta") source("Help.R") # Subset to wave 4 dat_use <- dat[dat$wave == 4, ] { dat_use$west <- 1 - dat_use$east # remove state formula.5_int <- as.character("hate_violence_means ~ MateComp.cont*west + JobComp.cont + LifeSatis.cont + factor(age_group) + factor(gender) + factor(citizenship) + factor(marital) + factor(religion) + eduyrs + factor(occupation) + factor(income) + factor(household_size) + factor(self_econ) + factor(ref_integrating) + factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror) + factor(ref_loc_services) + factor(ref_loc_economy) + factor(ref_loc_crime) + factor(ref_loc_culture) + factor(ref_loc_islam) + factor(ref_loc_schools) + factor(ref_loc_housing) + factor(ref_loc_wayoflife)") formula.6_int <- paste(formula.5_int, "factor(distance_ref) + factor(settle_ref)", "lrscale + afd + muslim_ind + afd_ind + contact_ind", sep="+", collapse="+") ## Interaction with East/West # with Difference Outcomes # hate_pol_message: "82. Support for Hate Crime_Attacks against refugee homes are somet" # hate_prevent_settlement: "82. Support for Hate Crime_Racist violence is defensible if it lea" # hate_polcondemn: "82. Support for Hate Crime_Politicians should condemn attacks agai" # hate_justified: "82. Support for Hate Crime_Hostility against foreigners is sometimes justified" formula.7_int.means <- paste("hate_violence_means ~ ", as.character(as.formula(formula.6_int))[3], sep = "") formula.7_int.message <- paste("hate_pol_message ~", as.character(as.formula(formula.6_int))[3], sep = "") formula.7_int.prevent <- paste("hate_prevent_settlement ~", as.character(as.formula(formula.6_int))[3], sep = "") formula.7_int.condemn <- paste("hate_polcondemn ~ ", as.character(as.formula(formula.6_int))[3], sep = "") formula.7_int.justified <- paste("hate_justified ~ ", as.character(as.formula(formula.6_int))[3], sep = "") # output lm7_int.means <- lm(as.formula(formula.7_int.means), data = dat_use) lm7_int.justified <- lm(as.formula(formula.7_int.justified), data=dat_use) lm7_int.message <- lm(as.formula(formula.7_int.message), data=dat_use) lm7_int.prevent <- lm(as.formula(formula.7_int.prevent), data=dat_use) lm7_int.condemn <- lm(as.formula(formula.7_int.condemn), data=dat_use) ## Table D.5.2 (in Appendix D.5) lm.list_int <- list(lm7_int.means, lm7_int.justified, lm7_int.message, lm7_int.prevent, lm7_int.condemn) star_out(stargazer(lm.list_int, covariate.labels = c("Mate Competition", "West", "Job Competition","Life Satisfaction", "Mate Competition x West"), keep=c("MateComp.cont", "west", "JobComp.cont","LifeSatis.cont", "MateComp.cont:west")), name = "table_D5_2.tex") } # ########################################## # Appendix D6: Replcate Results with Men # ########################################## rm(list=ls()) # Set the directly appropriately dat <- read.dta13(file = "survey.dta") source("Help.R") # Subset to wave 4 dat_use <- dat[dat$wave == 4, ] dat_male <- dat_use[dat_use$gender == "Male",] dat_female <- dat_use[dat_use$gender == "Female",] # ########################################## # Table D.6.1: Replicate Main Models # ########################################## { lm1 <- lm(hate_violence_means ~ MateComp.cont, data=dat_male) lm2 <- lm(hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont, data=dat_male) lm3 <- lm(hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + # age group factor(state) + # state factor(citizenship) + # german citizen factor(marital) + # marital status factor(religion) + # religious affiliation eduyrs + # education factor(occupation) + # main activity factor(income) + # income factor(household_size) + # household size factor(self_econ), # subjective social status data=dat_male) lm4 <- lm(hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + # age group factor(state) + # state factor(citizenship) + # german citizen factor(marital) + # marital status factor(religion) + # religious affiliation eduyrs + # education factor(occupation) + # main activity factor(income) + # income factor(household_size) + # household size factor(self_econ) + # subjective social status factor(ref_integrating) + # Refugee Index (National-level; Q73) 8 in total factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror), data=dat_male) lm5 <- lm(hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + # age group factor(state) + # state factor(citizenship) + # german citizen factor(marital) + # marital status factor(religion) + # religious affiliation eduyrs + # education factor(occupation) + # main activity factor(income) + # income factor(household_size) + # household size factor(self_econ) + # subjective social status factor(ref_integrating) + # Refugee Index (National-level; Q73) 8 in total factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror) + factor(ref_loc_services) + # Refugee Index (Local, Q75) factor(ref_loc_economy) + factor(ref_loc_crime) + factor(ref_loc_culture) + factor(ref_loc_islam) + factor(ref_loc_schools) + factor(ref_loc_housing) + factor(ref_loc_wayoflife), ## end data=dat_male) # Add More Variables # lrscale Q21 Left-Right Scale # afd, Q23 Closeness to AfD # muslim_ind, afd_ind, contact_ind # distance_ref Q71. Distance to refugee reception centers # settle_ref Q72. Settlement of refugees living in area formula.5 <- as.character("hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + factor(state) + factor(citizenship) + factor(marital) + factor(religion) + eduyrs + factor(occupation) + factor(income) + factor(household_size) + factor(self_econ) + factor(ref_integrating) + factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror) + factor(ref_loc_services) + factor(ref_loc_economy) + factor(ref_loc_crime) + factor(ref_loc_culture) + factor(ref_loc_islam) + factor(ref_loc_schools) + factor(ref_loc_housing) + factor(ref_loc_wayoflife)") formula.6 <- paste(formula.5, "factor(distance_ref) + factor(settle_ref)", "lrscale + afd + muslim_ind + afd_ind + contact_ind", sep="+", collapse="+") lm6 <- lm(as.formula(formula.6), data=dat_male) } lm.list.table1 <- list(lm1, lm2, lm3, lm4, lm5, lm6) # Table D.6.1 star_out(stargazer(lm.list.table1, covariate.labels = c("Mate Competition","Job Competition","Life Satisfaction"), keep=c("MateComp.cont","JobComp.cont","LifeSatis.cont")), name = "table_D6_1.tex") ## ############################################### ## Figure D.6.2: Replicating Figure 4 (with Male) ## ############################################### # with Difference Outcomes # hate_pol_message: "82. Support for Hate Crime_Attacks against refugee homes are somet" # hate_prevent_settlement: "82. Support for Hate Crime_Racist violence is defensible if it lea" # hate_polcondemn: "82. Support for Hate Crime_Politicians should condemn attacks agai" # hate_justified: "82. Support for Hate Crime_Hostility against foreigners is sometimes justified" # without gender formula.5 <- as.character("hate_violence_means ~ MateComp.cont + JobComp.cont + LifeSatis.cont + factor(age_group) + factor(state) + factor(citizenship) + factor(marital) + factor(religion) + eduyrs + factor(occupation) + factor(income) + factor(household_size) + factor(self_econ) + factor(ref_integrating) + factor(ref_citizenship) + factor(ref_reduce) + factor(ref_moredone) + factor(ref_cultgiveup) + factor(ref_economy) + factor(ref_crime) + factor(ref_terror) + factor(ref_loc_services) + factor(ref_loc_economy) + factor(ref_loc_crime) + factor(ref_loc_culture) + factor(ref_loc_islam) + factor(ref_loc_schools) + factor(ref_loc_housing) + factor(ref_loc_wayoflife)") formula.6 <- paste(formula.5, "factor(distance_ref) + factor(settle_ref)", "lrscale + afd + muslim_ind + afd_ind + contact_ind", sep="+", collapse="+") formula.7.means <- paste("hate_violence_means ~ ", as.character(as.formula(formula.6))[3], sep = "") formula.7.message <- paste("hate_pol_message ~", as.character(as.formula(formula.6))[3], sep = "") formula.7.prevent <- paste("hate_prevent_settlement ~", as.character(as.formula(formula.6))[3], sep = "") formula.7.condemn <- paste("hate_polcondemn ~ ", as.character(as.formula(formula.6))[3], sep = "") formula.7.justified <- paste("hate_justified ~ ", as.character(as.formula(formula.6))[3], sep = "") # output lm7.means <- lm(as.formula(formula.7.means), data=dat_male) lm7.justified <- lm(as.formula(formula.7.justified), data=dat_male) lm7.message <- lm(as.formula(formula.7.message), data=dat_male) lm7.prevent <- lm(as.formula(formula.7.prevent), data=dat_male) lm7.condemn <- lm(as.formula(formula.7.condemn), data=dat_male) point <- c(coef(lm7.means)["MateComp.cont"], coef(lm7.justified)["MateComp.cont"], coef(lm7.message)["MateComp.cont"], coef(lm7.prevent)["MateComp.cont"], coef(lm7.condemn)["MateComp.cont"]) se <- c(summary(lm7.means)$coef["MateComp.cont", 2], summary(lm7.justified)$coef["MateComp.cont", 2], summary(lm7.message)$coef["MateComp.cont", 2], summary(lm7.prevent)$coef["MateComp.cont", 2], summary(lm7.condemn)$coef["MateComp.cont", 2]) pdf("figure_D6_2.pdf", height = 4, width = 8) par(mar = c(2,4,4,1)) plot(seq(1:5), point, pch = 19, ylim = c(-0.05, 0.25), xlim = c(0.5, 5.5), xlab = "", xaxt = "n", ylab = "Estimated Effects", main = "Estimated Effects of Mate Competition (among male)", cex.lab = 1.25, cex.axis = 1.25, cex.main = 1.5) segments(seq(1:5), point - 1.96*se, seq(1:5), point + 1.96*se, lwd = 2) Axis(side=1, at = seq(1:5), labels = c("Only Means", "Justified", "Message", "Prevent", "Condemn"), cex.axis = 1.25) abline(h =0, lty = 2) dev.off() ## Table D.6.3 lm.list_d_m <- list(lm7.means, lm7.justified, lm7.message, lm7.prevent, lm7.condemn) star_out(stargazer(lm.list_d_m, covariate.labels = c("Mate Competition","Job Competition","Life Satisfaction"), keep=c("MateComp.cont","JobComp.cont","LifeSatis.cont")), name = "table_D6_3.tex") # ########################################## # Appendix D8, Table D8: YouGov analysis # ########################################## rm(list=ls()) you_data <- read.dta13(file = "YouGov.dta") source("Help.R") ## (1) Main Regression lm1 <- lm(hate_cont ~ mate_compete + age + # age gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright, # leftright scale data = you_data) summary(lm1) ## (2) + Aggression Score lm2 <- lm(hate_cont ~ mate_compete + age + # age gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean, # aggression score data = you_data) summary(lm2) ## (3) + Refugee Index lm3 <- lm(hate_cont ~ mate_compete + age + # age gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife, data = you_data) summary(lm3) ## (4) + Refugee Contact lm4 <- lm(hate_cont ~ mate_compete + age + # age gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife + see_ref_road + see_ref_store + see_ref_center + ## Refugee Contact (5 Questions) see_ref_school + see_ref_work, data = you_data) summary(lm4) ## (5) + AfD Score lm5 <- lm(hate_cont ~ mate_compete + age + # age gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife + see_ref_road + see_ref_store + see_ref_center + ## Refugee Contact (5 Questions) see_ref_school + see_ref_work + afd.score, # Closeness to AfD data = you_data) summary(lm5) star_out(stargazer(list(lm1, lm2, lm3, lm4, lm5), covariate.labels = c("Mate Competition", "Aggressiveness"), keep=c("mate_compete", "angry_mean")), name = "table_D8_1.tex") rm(list=ls()) you_data <- read.dta13(file = "YouGov.dta") you_male <- you_data[you_data$gender == levels(you_data$gender)[1], ] source("Help.R") { ## (1) Main Regression lm1 <- lm(hate_cont ~ mate_compete + age + # age factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright, # leftright scale data = you_male) ## (2) + Aggression Score lm2 <- lm(hate_cont ~ mate_compete + age + # age factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean, # aggression score data = you_male) ## (3) + Refugee Index lm3 <- lm(hate_cont ~ mate_compete + age + # age factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife, data = you_male) summary(lm3) ## (4) + Refugee Contact lm4 <- lm(hate_cont ~ mate_compete + age + # age # gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife + see_ref_road + see_ref_store + see_ref_center + ## Refugee Contact (5 Questions) see_ref_school + see_ref_work, data = you_male) summary(lm4) ## (5) + AfD Score lm5 <- lm(hate_cont ~ mate_compete + age + # age # gender + # gender factor(sta) + #state factor(mstat) + # Marital Status reli + # religion educ_aggr_rec + # education hinc + # income housz + # household size pol_leftright + # leftright scale angry_mean + # aggression score ref_loc_services + ref_loc_economy + ref_loc_crime + ## Refugee Questions (9 Questions) ref_loc_culture + ref_loc_islam + ref_local_job + ref_loc_schools + ref_loc_housing + ref_loc_wayoflife + see_ref_road + see_ref_store + see_ref_center + ## Refugee Contact (5 Questions) see_ref_school + see_ref_work + afd.score, # Closeness to AfD data = you_male) summary(lm5) } star_out(stargazer(list(lm1, lm2, lm3, lm4, lm5), covariate.labels = c("Mate Competition", "Aggressiveness"), keep=c("mate_compete", "angry_mean")), name = "table_D8_2.tex")