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| rm(list=ls())
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| library(foreign)
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| library(readstata13)
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| library(tidyverse)
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| library(reshape2)
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| library(prais)
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| library(panelAR)
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| data <- read.dta13("compiled.dta")
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| hhsize <- read.dta13("hhsize.dta")
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| epa <- read.dta13("epa.dta")
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| hhsize <- melt(hhsize, id.vars=c("State", "state_id_no", "state_fip"))
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| year <- c(rep(7,50), rep(8,50), rep(9,50), rep(10,50), rep(11,50),
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| rep(12,50), rep(13,50), rep(14,50), rep(15,50), rep(16,50))
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| hhsize <- cbind(hhsize, year)
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| hhsize <- hhsize[c("State", "value", "year")]
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| names(hhsize)[2] <- "hhsize"
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| data <- merge(data, hhsize, by=c("State", "year"))
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| data <- merge(data, epa, by=c("State", "year"))
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| data$emppop_pct <- data$emppop/(data$pop*1000)*100
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| data$manu_gdp <- data$manuf/data$gdp*100
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| data[c("epa", "wrkhrs", "emppop_pct", "laborprod", "pop", "manu_gdp",
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| "energy", "hhsize", "workpop")] <- log(data[c("epa", "wrkhrs", "emppop_pct", "laborprod", "pop", "manu_gdp",
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| "energy", "hhsize", "workpop")])
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| states <- unique(data$State)
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| group_var <- data %>%
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| group_by(State) %>%
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| groups %>%
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| unlist %>%
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| as.character
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| group_var
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| set.seed(42)
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| random_states <- data %>%
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| group_by(State) %>%
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| summarise() %>%
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| sample_n(5) %>%
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| mutate(unique_id=1:NROW(.))
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| random_states
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| sampledata <- data %>%
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| group_by(State) %>%
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| right_join(random_states, by=group_var) %>%
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| group_by_(group_var)
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| sampledata <- sampledata[order(sampledata$State, sampledata$year),]
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| sampledata <- as.data.frame(sampledata)
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| model1 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=sampledata, panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE)
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| summary(model1)
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| model2 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=sampledata[which(sampledata$year<14),], panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE)
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| summary(model2)
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| model3 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=sampledata[which(sampledata$year>13),], panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE, rho.na.rm=TRUE)
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| summary(model3)
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| model4 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=data, panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE)
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| summary(model4)
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| model5 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=data[which(data$year<14),], panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE)
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| summary(model5)
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| model6 <- panelAR(epa ~ wrkhrs + emppop_pct + laborprod + pop + manu_gdp +
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| energy + hhsize + workpop + State + factor(year), data=data[which(data$year>13),], panelVar='State', timeVar='year', panelCorrMethod='pcse',singular.ok=TRUE, autoCorr="psar1", complete.case=TRUE)
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| summary(model6)
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