| |
| |
| |
|
|
| rm(list = ls()) |
|
|
| require(foreign) |
| require(ggplot2) |
| require(RColorBrewer) |
| require(scales) |
| require(plyr) |
| require(dplyr) |
| require(rdrobust) |
| require(haven) |
| require(readstata13) |
| require(sandwich) |
| require(haven) |
| require(fuzzyjoin) |
|
|
| |
|
|
|
|
| |
| censo_ag_wreform <- read.dta13(file="Data/censo_ag_wreform.dta") |
|
|
| |
| conflict_data <- read.csv(file="./Data/conflict_canton.csv", header=TRUE) |
| censo_ag_wreform <- left_join(censo_ag_wreform,conflict_data, by="CODIGO") |
|
|
| |
|
|
| |
|
|
| |
| aesthetics <- list( |
| theme_bw(), |
| theme(text=element_text(family="Palatino"), |
| legend.title=element_blank(), |
| |
| |
| |
| |
| plot.background=element_rect(colour="white",fill="white"), |
| panel.grid.major=element_blank(), |
| panel.grid.minor=element_blank(), |
| axis.text.x=element_text(angle=45, face="bold",hjust=1), |
| axis.title.y=element_text(face="bold.italic"), |
| axis.title.x=element_text(face="bold.italic"))) |
|
|
|
|
|
|
| |
|
|
| censo_ag_wreform_tev <- censo_ag_wreform |
| ag.grouped <- mutate(censo_ag_wreform_tev %>% group_by(Expropretario_ISTA), num_per_owner = n()) |
| censo_ag_wreform_tev$num_per_owner<- ag.grouped$num_per_owner |
|
|
| years <- 2007 |
| i = 2007 |
| censo_ag_wreform_tev <- mutate(censo_ag_wreform_tev, |
| ln_agprodII = ln_agprod, |
| ln_agprod = ln_agprod_pricew_crops) |
|
|
|
|
|
|
| |
|
|
| |
| |
| num_ests <- 3*4 |
| rd_estimates <-data.frame(estimates = rep(0, num_ests), ses = rep(0, num_ests), |
| y_var = rep(0,num_ests), |
| label = rep(0, num_ests)) |
|
|
| k <- "triangular" |
| p <- 1 |
| b<- "mserd" |
|
|
| controls <- c("AREA_HECTAREA", "Area_has") |
| count<-1 |
|
|
| lm.beta.ses <- function (MOD, dta,y="ln_agprod") |
| { |
| b <- MOD$se[1] |
| model.dta <- filter(dta, norm_dist > -1*MOD$bws[1,"left"] & norm_dist < MOD$bws[1,"right"] ) |
| sx <- sd(model.dta[,c("Above500")]) |
| |
| sy <- sd((model.dta[,c(y)]),na.rm=TRUE) |
| beta <- b * sx/sy |
| return(beta) |
| } |
|
|
| lm.beta <- function (MOD, dta,y="ln_agprod") |
| { |
| b <- MOD$coef[1] |
| model.dta <- filter(dta, norm_dist > -1*MOD$bws[1,"left"] & norm_dist < MOD$bws[1,"right"] ) |
| sx <- sd(model.dta[,c("Above500")]) |
| |
| sy <- sd((model.dta[,c(y)]),na.rm=TRUE) |
| beta <- b * sx/sy |
| return(beta) |
| } |
|
|
|
|
| controls <- list("AREA_HECTAREA","Area_has",c("Area_has","AREA_HECTAREA")) |
| labels <- c("Property Size in 1980", "Property Size in 2007", "All Controls") |
| label.count <- 1 |
| for (i in controls) { |
| print(i) |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprod), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("y_var")] <- "Revenue per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprodII), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("y_var")] <- "Profit per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$CashCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Cash Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$StapleCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Staple Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| label.count<-label.count+1 |
| } |
|
|
|
|
| rd_estimates |
|
|
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data <-rd_estimates |
|
|
| |
|
|
| |
| betas <- data |
| dim(betas) |
| betas<- betas[seq(dim(betas)[1],1),] |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimates","ses","label")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "Group") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = unique(MatrixofModels$IV)) |
| c <- factor(MatrixofModels$Group, levels = c("Controlling for: Property Size in 1980", |
| "Controlling for: Property Size in 2007", |
| "Controlling for: All Controls")) |
| |
| |
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL, facets=~ Group) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nStandardized Effect") + aesthetics + xlab("") |
| |
| |
| OutputPlot + coord_flip() + scale_y_continuous(breaks = seq(-1, 1,0.25)) + theme(strip.text.x = element_text(size = 5)) |
| |
| ggsave(filename="./Output/CoefPlot_wSizeControls.pdf", width=6, height=3) |
|
|
| |
|
|
| |
|
|
| |
| num_ests <- 4*4 |
| rd_estimates <-data.frame(estimates = rep(0, num_ests), ses = rep(0, num_ests), |
| y_var = rep(0,num_ests), |
| label = rep(0, num_ests)) |
|
|
| k <- "triangular" |
| p <- 1 |
| b<- "mserd" |
|
|
| count<-1 |
| censo_ag_wreform_tev <- censo_ag_wreform_tev %>% |
| mutate(Conflict1980 = ifelse(!is.na(Conflict_1980),Conflict_1980,0), |
| Conflict1981 = ifelse(!is.na(Conflict_1981),Conflict_1981,0), |
| Conflict1982 = ifelse(!is.na(Conflict_1982),Conflict_1982,0), |
| Conflict198082 = Conflict1980+Conflict1981+Conflict1982) |
| controls <- list("CONFLICT","FFAA","ESCUAD","Conflict198082") |
| labels <- c("Conflict (Any Actor)", "Military Violence", "Death Squad Violence", "Conflict from 1980-1982") |
| label.count <- 1 |
| for (i in controls) { |
| print(i) |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprod), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("y_var")] <- "Revenue per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprodII), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("y_var")] <- "Profit per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$CashCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Cash Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$StapleCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Staple Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| label.count<-label.count+1 |
| } |
|
|
|
|
| rd_estimates |
|
|
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data <-rd_estimates |
|
|
| |
|
|
| |
| betas <- data |
| dim(betas) |
| betas<- betas[seq(dim(betas)[1],1),] |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimates","ses","label")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "Group") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = unique(MatrixofModels$IV)) |
| MatrixofModels$Group <- factor(MatrixofModels$Group, levels = paste0("Controlling for: ",labels)) |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL, facets=~ Group) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nStandardized Effect") + aesthetics |
|
|
| |
| OutputPlot + coord_flip() + scale_y_continuous(breaks = seq(-1, 1,0.25)) + xlab("") |
|
|
| ggsave(filename="./Output/CoefPlot_wConflictTypeControls.pdf") |
|
|
| |
|
|
|
|
| |
|
|
| commerc <- read.dta13(file = "./Data/censo_ag_commercialization.dta") |
| censo_ag_wreform_tev <- left_join(censo_ag_wreform_tev,commerc, by="agg_id") |
|
|
| num_ests <- 4*4 |
| rd_estimates <-data.frame(estimates = rep(0, num_ests), ses = rep(0, num_ests), |
| y_var = rep(0,num_ests), |
| label = rep(0, num_ests)) |
|
|
| k <- "triangular" |
| p <- 1 |
| b<- "mserd" |
|
|
| count<-1 |
|
|
| controls <- list("MAYO", "MINO", "OTRO", c("MAYO", "MINO", "OTRO")) |
| labels <- c("Wholeseller", "Retailer", "Exporting", "All Controls") |
| label.count <- 1 |
| for (i in controls) { |
| print(i) |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprod), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("y_var")] <- "Revenue per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprodII), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("y_var")] <- "Profit per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$CashCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Cash Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$StapleCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Staple Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| label.count<-label.count+1 |
| } |
|
|
|
|
| rd_estimates |
|
|
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data <-rd_estimates |
|
|
| |
|
|
| |
| betas <- data |
| dim(betas) |
| betas<- betas[seq(dim(betas)[1],1),] |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimates","ses","label")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "Group") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = unique(MatrixofModels$IV)) |
| MatrixofModels$Group <- factor(MatrixofModels$Group, levels = paste0("Controlling for: ", labels)) |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL, facets=~ Group) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nStandardized Effect") + aesthetics |
|
|
| |
| OutputPlot + coord_flip() + scale_y_continuous(breaks = seq(-1, 1,0.25)) + xlab("") |
|
|
| ggsave(filename="./Output/CoefPlot_wCommercialization.pdf") |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
| |
|
|
| |
|
|
| |
| poblaccion_section <- read_sav(file = "./Data/poblacion.sav") |
| |
| cantons_popcensus <- dplyr::select(poblaccion_section, |
| gender=S06P02, |
| age=S06P03A, |
| S06P07A, S06P08A1, S06P08A2, |
| DEPDSC, MUNDSC, CANDSC, |
| literate = S06P09, |
| educated = S06P10, |
| educ_level = S06P11A, |
| finished_hs = S06P11B) |
| |
| cantons_popcensus <- mutate(cantons_popcensus, |
| born_same_as_mother= ifelse(S06P07A < 3,S06P07A,NA) , |
| lived_canton_always = ifelse(S06P08A1 < 3,S06P08A1,NA), |
| lived_canton_year = ifelse(S06P08A2>0,S06P08A2,NA), |
| CODIGO_NOM = toupper(stri_trans_general(paste(DEPDSC, MUNDSC, CANDSC,sep=", "),"Latin-ASCII"))) |
| |
| cantons_popcensus <- mutate(cantons_popcensus, |
| born_same_as_mother= ifelse(born_same_as_mother ==2 ,0,born_same_as_mother) , |
| lived_canton_always = ifelse(lived_canton_always ==2 ,0,lived_canton_always), |
| educ_yrs = 1*(educ_level==1)+6*(educ_level==2)+ 9*(educ_level==3)+ |
| 11*(educ_level==4)+13*(educ_level==5)+ 15*(educ_level==6)+ |
| 16*(educ_level==7)+ 17*(educ_level==8)+ 20*(educ_level==9)) |
| |
| |
| cantons_popcensus <- cantons_popcensus %>% |
| group_by(CODIGO_NOM) %>% |
| summarise_if(is.numeric, mean, na.rm = TRUE) |
|
|
| |
| max.dist <- 10 |
| censo_ag_wreform_tev <- stringdist_join(as.data.frame(censo_ag_wreform_tev), |
| as.data.frame(cantons_popcensus), |
| by = c("CODIGO_NOM.x" = "CODIGO_NOM"), |
| mode = "left", |
| method = "jw", |
| max_dist = max.dist, |
| distance_col = "dist") |
|
|
| censo_ag_wreform_tev <- censo_ag_wreform_tev %>% |
| group_by(agg_id) %>% |
| top_n(1, -dist) %>% ungroup() |
| |
| censo_ag_wreform_tev <- as.data.frame(censo_ag_wreform_tev) |
|
|
| |
| num_ests <- 4*4 |
| rd_estimates <-data.frame(estimates = rep(0, num_ests), ses = rep(0, num_ests), |
| y_var = rep(0,num_ests), |
| label = rep(0, num_ests)) |
|
|
| k <- "triangular" |
| p <- 1 |
| b<- "mserd" |
|
|
| lm.beta.ses <- function (MOD, dta,y="ln_agprod") |
| { |
| b <- MOD$se[1] |
| model.dta <- filter(dta, norm_dist > -1*MOD$bws[1,"left"] & norm_dist < MOD$bws[1,"right"] ) |
| sx <- sd(model.dta[,c("Above500")]) |
| |
| sy <- sd((model.dta[,c(y)]),na.rm=TRUE) |
| beta <- b * sx/sy |
| return(beta) |
| } |
|
|
|
|
| count<-1 |
| controls <- list("lived_canton_always", "born_same_as_mother","lived_canton_year", |
| c("born_same_as_mother","lived_canton_always","lived_canton_year")) |
| labels <- c("% Always Lived in Canton", "% Born in Mother's Canton", "Avg. Years in Canton","All Controls") |
| label.count <- 1 |
| for (i in controls) { |
| print(i) |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprod), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprod") |
| rd_estimates[count,c("y_var")] <- "Revenue per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$ln_agprodII), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="ln_agprodII") |
| rd_estimates[count,c("y_var")] <- "Profit per ha" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$CashCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="CashCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Cash Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| |
| |
| |
| rdests <- rdrobust(y = (censo_ag_wreform_tev$StapleCrop_Share), |
| x=censo_ag_wreform_tev$norm_dist, |
| covs = censo_ag_wreform_tev[,i], |
| c = 0, |
| p = p, |
| q = p +1, |
| kernel = k, |
| bwselect = b, |
| cluster=(censo_ag_wreform_tev$Expropretario_ISTA),vce="hc1") |
| rd_estimates[count,c("estimates")] <-lm.beta(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("ses")] <- lm.beta.ses(MOD=rdests, dta=censo_ag_wreform_tev, y="StapleCrop_Share") |
| rd_estimates[count,c("y_var")] <- "Staple Crop Share" |
| rd_estimates[count,c("label")] <- paste("Controlling for: ",labels[label.count],sep="") |
| count<-count+1 |
| label.count<-label.count+1 |
| } |
|
|
|
|
| rd_estimates |
|
|
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data <-rd_estimates |
|
|
| |
|
|
| |
| betas <- data |
| dim(betas) |
| betas<- betas[seq(dim(betas)[1],1),] |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimates","ses","label")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "Group") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = unique(MatrixofModels$IV)) |
| MatrixofModels$Group <- factor(MatrixofModels$Group, levels = paste0("Controlling for: ", labels)) |
|
|
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL, facets=~ Group) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nStandardized Effect") + aesthetics |
|
|
| |
| OutputPlot + coord_flip() + scale_y_continuous(breaks = seq(-1, 1,0.25)) + xlab("") |
|
|
| ggsave(filename="./Output/CoefPlot_wMigrationControls.pdf") |
|
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