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| rm(list=ls()) |
| library(plyr);library(dplyr, warn.conflicts = F) |
| library(tidyr) |
| library(ggplot2) |
| suppressMessages( library(lmtest) ) |
| suppressMessages( library(multiwayvcov) ) |
| suppressMessages(library(stargazer)) |
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| s = function(x){summary(factor(x))} |
| |
| dir.create(paste0(getwd(), '/Output/')) |
| dir.create(paste0(getwd(), '/Output/Figure_6/')) |
| path0 = paste0(getwd(), '/Output/Figure_6/', Sys.Date(),'/') |
| dir.create(path0) |
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| Q = read.csv('4-20-20_deid_nearestK.csv', |
| na.strings=c('','NA'),strip.white=T,stringsAsFactors = F) |
| Q = Q[which(Q$Wave == 'Bangalore 2017'),] |
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| Q = Q %>% dplyr::rename(Q2A1 = L.Neighbor_Random_2_A1, |
| Q2A2 = L.Neighbor_Random_2_A2, |
| Q2B1 = L.Neighbor_Random_2_B1, |
| Q2B2 = L.Neighbor_Random_2_B2, |
| Q2C1 = L.Neighbor_Random_2_C1, |
| Q2C2 = L.Neighbor_Random_2_C2, |
| Q3A1 = L.Neighbor_Random_3_A1, |
| Q3A2 = L.Neighbor_Random_3_A2, |
| Q3B1 = L.Neighbor_Random_3_B1, |
| Q3B2 = L.Neighbor_Random_3_B2, |
| Q3C1 = L.Neighbor_Random_3_C1, |
| Q3C2 = L.Neighbor_Random_3_C2, |
| |
| Q2 = L.Neighbor_Question_2, |
| Q3 = L.Neighbor_Question_3) |
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| |
| B = Q %>% |
| unite('Q2',matches('Q2')) %>% unite('Q3',matches('Q3')) %>% |
| gather(Question,b,starts_with('Q')) %>% arrange(X) %>% separate('b', c('A1','A2','B1','B2','C1','C2','y')) |
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| B = B %>% filter(!(A1 == A2 & B1 == B2 & C1 == C2)) |
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| |
| C = B %>% unite('ABC1',c(A1,B1,C1)) %>% unite('ABC2',c(A2,B2,C2)) %>% gather(Neighbor, ABC, c(ABC1,ABC2)) %>% |
| arrange(X) %>% separate('ABC',c('A','B','C')) %>% mutate(Neighbor = as.numeric(mapvalues(Neighbor, from = c('ABC1','ABC2'), to = c(1,2)))) |
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| C$B_revised = NA |
| C$B_revised[which(C$C.C6_Religion == 'Hindu' & C$B == 0)] = 1 |
| C$B_revised[which(C$C.C6_Religion == 'Hindu' & C$B == 1)] = 0 |
| C$B_revised[which(C$C.C6_Religion == 'Hindu' & C$B == 2)] = 2 |
| C$B_revised[which(C$C.C6_Religion == 'Muslim' & C$B == 0)] = 0 |
| C$B_revised[which(C$C.C6_Religion == 'Muslim' & C$B == 1)] = 1 |
| C$B_revised[which(C$C.C6_Religion == 'Muslim' & C$B == 2)] = 2 |
| C$B = as.character(C$B_revised) |
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| C = C[which(!is.na(C$B)),] |
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| |
| ModFn = function(x,f){ |
| data.frame(x, model.matrix(as.formula(f), data=x))} |
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| C = C %>% ModFn('~ A - 1') %>% ModFn('~ B - 1') %>% ModFn('~ C - 1') |
| C = C %>% mutate(Y = y == Neighbor) |
| C = C %>% dplyr::rename(A_0 = A0, |
| A_1 = A1, |
| B_0 = B0, |
| B_1 = B1, |
| C_0 = C0, |
| C_1 = C1, |
| C_2 = C2, |
| C_3 = C3, |
| C_4 = C4) |
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| B = C; rm(C) |
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| form1 = as.formula(paste0('Y ~ ', |
| paste(strsplit('A_0 A_1 B_0 B_1 C_0 C_1 C_2 C_3 C_4', split = ' ')[[1]], collapse=' + '))) |
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| DF_C_v2 = function(l_m,id){ |
| l_m_pl = data.frame(Parameter = rownames(l_m[-1,])) %>% |
| mutate(Coef = l_m[-1,1]) %>% |
| mutate(Lo = Coef - 1.96*l_m[-1,2]) %>% |
| mutate(Hi = Coef + 1.96*l_m[-1,2]) %>% |
| rbind(data.frame(Parameter = c('A_3','B_4'), |
| Coef = c(0,0), |
| Lo = c(0,0), |
| Hi = c(0,0) |
| )) %>% |
| mutate(ID = id) %>% |
| mutate(Parameter = as.character(Parameter)) %>% |
| arrange(Parameter) |
| } |
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| calc_p_relig_neigh = function(k, Dat){ |
| var <- paste0('Nearest',k,'_SameReligion') |
| if(median(Dat[,var],na.rm=T)==k){ |
| var_break <- k-1 |
| }else{var_break = floor(median(Dat[,var],na.rm=T))} |
| dat_lo = Dat[ which(Dat[,var] <= var_break ) ,] |
| dat_hi = Dat[ which(Dat[,var] > var_break ) ,] |
| if(nrow(dat_lo) == 0 | nrow(dat_hi) == 0){p_a2 = NA |
| }else{ |
| lm_lo = lm(form1, data = dat_lo ) |
| lm_hi = lm(form1, data = dat_hi ) |
| lm_clus_lo = coeftest(lm_lo, cluster.vcov(lm_lo, dat_lo[,c('X','A.A7_Area.Neighborhood')])) |
| lm_clus_hi = coeftest(lm_hi, cluster.vcov(lm_hi, dat_hi[,c('X','A.A7_Area.Neighborhood')])) |
| z_a2 = (lm_clus_lo[3,1] - lm_clus_hi[3,1]) / sqrt(lm_clus_lo[3,2]^2 + lm_clus_hi[3,2]^2) |
| p_a2 = 2 * pnorm( abs(z_a2), mean = 0, sd = 1, lower.tail = F) |
| coef_lo = lm_clus_lo[3,1]; coef_hi = lm_clus_hi[3,1] |
| sd_lo = lm_clus_lo[3,2]; sd_hi = lm_clus_hi[3,2] |
| return(data.frame(coef_lo, coef_hi, sd_lo, sd_hi, p_a2)) } |
| } |
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| relig_results = sapply(1:30, function(x) calc_p_relig_neigh(k=x, Dat = B)) %>% t() %>% data.frame() %>% |
| mutate(k = 1:30, |
| dif = as.numeric(coef_lo) - as.numeric(coef_hi), |
| dif_sd = sqrt(as.numeric(sd_lo)^2 + as.numeric(sd_hi)^2), |
| dif_lobd = dif - 1.96*dif_sd, |
| dif_hibd = dif + 1.96*dif_sd |
| ) |
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| |
| rrc = relig_results[seq(from = 2, to = 30, by = 3),] %>% |
| rename(Low = coef_lo, High = coef_hi) %>% |
| select(-starts_with('dif')) %>% |
| gather(Seg, Coef, c(Low, High)) %>% mutate(Coef = as.numeric(Coef), |
| sd_lo = as.numeric(sd_lo), |
| sd_hi = as.numeric(sd_hi), |
| p_a2 = as.numeric(p_a2), |
| sd = sd_lo*(Seg == 'Low') + sd_hi*(Seg == 'High'), |
| lo = Coef - 1.96*sd, |
| hi = Coef + 1.96*sd, |
| sig = factor(p_a2 < 0.05)) |
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| |
| ggplot(data = rrc, aes(x = k, y = Coef)) + |
| geom_pointrange(aes(ymin = lo, ymax = hi, x = k, shape = Seg, alpha = sig), |
| position = position_dodge(width = 0.9)) + |
| scale_shape_manual('Exposure', values = c(16, 17), labels = c('Low','High')) + |
| scale_alpha_manual('p < 0.05', c(FALSE), values=c(0.5), labels = c('No')) + |
| labs(shape = 'Exposure') + |
| theme_minimal() + ylab('Non-Coethnicity Coefficients') + |
| theme(text = element_text(size = 16), |
| plot.title = element_text(hjust = 0.5)) + |
| ggtitle('k-Nearest Own Religion') + |
| guides(shape = guide_legend(order = 1), |
| alpha = guide_legend(order = 0)) |
| ggsave(filename = paste0(path0, 'k-z_coefficients_NEIGHBOR.png'), height = 150, width = 150, units = 'mm') |
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| calc_p_relig_neigh_demed = function(k, Dat){ |
| var <- paste0('DeMedNearest',k,'_SameReligion') |
| var_break = 0 |
| dat_lo = Dat[ which(Dat[,var] < var_break ) ,] |
| dat_hi = Dat[ which(Dat[,var] >= var_break ) ,] |
| if(nrow(dat_lo) == 0 | nrow(dat_hi) == 0){p_a2 = NA |
| }else{ |
| lm_lo = lm(form1, data = dat_lo ) |
| lm_hi = lm(form1, data = dat_hi ) |
| lm_clus_lo = coeftest(lm_lo, cluster.vcov(lm_lo, dat_lo[,c('X','A.A7_Area.Neighborhood')])) |
| lm_clus_hi = coeftest(lm_hi, cluster.vcov(lm_hi, dat_hi[,c('X','A.A7_Area.Neighborhood')])) |
| z_a2 = (lm_clus_lo[3,1] - lm_clus_hi[3,1]) / sqrt(lm_clus_lo[3,2]^2 + lm_clus_hi[3,2]^2) |
| p_a2 = 2 * pnorm( abs(z_a2), mean = 0, sd = 1, lower.tail = F) |
| coef_lo = lm_clus_lo[3,1]; coef_hi = lm_clus_hi[3,1] |
| sd_lo = lm_clus_lo[3,2]; sd_hi = lm_clus_hi[3,2] |
| return(data.frame(coef_lo, coef_hi, sd_lo, sd_hi, p_a2)) } |
| } |
|
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| relig_results_demed = sapply(c(5,10,15,20,25,30), function(x) calc_p_relig_neigh_demed(k=x, Dat = B)) %>% t() %>% data.frame() %>% |
| mutate(k = c(5,10,15,20,25,30), |
| dif = as.numeric(coef_lo) - as.numeric(coef_hi), |
| dif_sd = sqrt(as.numeric(sd_lo)^2 + as.numeric(sd_hi)^2), |
| dif_lobd = dif - 1.96*dif_sd, |
| dif_hibd = dif + 1.96*dif_sd |
| ) |
|
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| rrc_demed = relig_results_demed %>% |
| rename(Low = coef_lo, High = coef_hi) %>% |
| select(-starts_with('dif')) %>% |
| gather(Seg, Coef, c(Low, High)) %>% mutate(Coef = as.numeric(Coef), |
| sd_lo = as.numeric(sd_lo), |
| sd_hi = as.numeric(sd_hi), |
| p_a2 = as.numeric(p_a2), |
| sd = sd_lo*(Seg == 'Low') + sd_hi*(Seg == 'High'), |
| lo = Coef - 1.96*sd, |
| hi = Coef + 1.96*sd, |
| sig = factor(p_a2 < 0.05)) |
|
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| |
| ggplot(data = rrc_demed, aes(x = k, y = Coef)) + |
| geom_pointrange(aes(ymin = lo, ymax = hi, x = k, shape = Seg, alpha = sig), |
| position = position_dodge(width = 0.9)) + |
| scale_shape_manual('Exposure', values = c(16, 17), labels = c('Low','High')) + |
| scale_alpha_manual('p < 0.05', c(FALSE), values=c(0.5), labels = c('No')) + |
| labs(shape = 'Exposure') + |
| theme_minimal() + ylab('Non-Coethnicity Coefficients') + |
| theme(text = element_text(size = 16), |
| plot.title = element_text(hjust = 0.5)) + |
| ggtitle('k-Nearest Own Religion (De-medianed)') + |
| guides(shape = guide_legend(order = 1), |
| alpha = guide_legend(order = 0)) |
| ggsave(filename = paste0(path0, 'k-z_coefficients_NEIGHBOR_demed.png'), height = 150, width = 150, units = 'mm') |
|
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| relig_results_tab = relig_results %>% apply(2, function(x) as.numeric(x)) %>% data.frame() %>% |
| select(k, coef_lo, sd_lo, coef_hi, sd_hi, p_a2) %>% |
| rename(Coef_HiExp = coef_lo, SD_HiExp = sd_lo, Coef_LoExp = coef_hi, SD_LoExp = sd_hi, p = p_a2) %>% |
| round(3) |
| out = stargazer(relig_results_tab, summary = F, rownames = F, |
| title = 'Results for co-ethnicity attribute in neighbor experiment compared between |
| high- and low-exposure subsamples, based on religious exposure', |
| label = 'table:ReligResults_Neighbor') |
| writeLines(out,con = paste0(path0,'ReligResults_Neighbor.tex'));rm(out, relig_results_tab) |
|
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