| { |
| library(tidyverse) |
| library(haven) |
| library(glue) |
| library(jtools) |
| library(lubridate) |
| library(huxtable) |
| library(multcomp) |
| library(lfe) |
| } |
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| |
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| |
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| |
| set.seed(2982) |
| county_variables <- read_csv('replication_data/county_variables.csv') %>% |
| sample_frac(.05) |
| transportation <- read_csv('replication_data/transportation.csv') |
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| |
| flat_data <- transportation %>% |
| mutate(prop_home = pop_home/(pop_home + pop_not_home), |
| |
| time_period = case_when( |
| between(date, ymd('2020-02-16'),ymd('2020-02-29')) ~ 'AAA Reference', |
| between(date, ymd('2020-03-19'),ymd('2020-04-01')) ~ 'March', |
| between(date, ymd('2020-08-16'),ymd('2020-08-29')) ~ 'August') |
| ) %>% |
| filter(!is.na(time_period), !is.na(pop_home)) %>% |
| group_by(time_period, fips, state) %>% |
| |
| summarize(prop_home = mean(prop_home, na.rm = TRUE)) %>% |
| arrange(state, fips, time_period) %>% |
| group_by(fips, state) %>% |
| |
| mutate(prop_home_change = 100*(prop_home/first(prop_home) - 1)) %>% |
| filter(time_period != 'AAA Reference') %>% |
| |
| pivot_wider(id_cols = c('fips','state'), |
| names_from = 'time_period', |
| values_from = c('prop_home','prop_home_change')) %>% |
| |
| right_join(county_variables, by = 'fips') |
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| |
| trumpIQR <- county_variables %>% |
| dplyr::select(fips, trump_share) %>% |
| unique() %>% |
| pull(trump_share) %>% |
| quantile(c(.25, .75), na.rm = TRUE) %>% |
| {.[2] - .[1]} %>% |
| unname() |
|
|
| |
| flat_data <- flat_data %>% |
| mutate(state = factor(state)) %>% |
| dplyr::select(prop_home_change_March, |
| prop_home_change_August, |
| income_per_capita, |
| trump_share, |
| male_percent, |
| percent_black, |
| percent_hispanic, |
| percent_college, |
| percent_retail, |
| percent_transportation, |
| percent_hes, |
| prop_rural, |
| ten_nineteen, |
| twenty_twentynine, |
| thirty_thirtynine, |
| forty_fortynine, |
| fifty_fiftynine, |
| sixty_sixtynine, |
| seventy_seventynine, |
| over_eighty, |
| state, |
| fips) %>% |
| ungroup() %>% |
| |
| mutate(across(starts_with('percent_'),function(x) x*100)) %>% |
| mutate(male_percent = male_percent*100, |
| percent_college = percent_college/100) %>% |
| mutate(income_per_capita = income_per_capita/1000) |
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| |
| formula_maker <- function(depvar, data) { |
| vnames <- data %>% |
| dplyr::select(-fips, -prop_home_change_March, -prop_home_change_August, -state) %>% |
| names() |
| |
| form <- paste0(depvar,'~', |
| paste(vnames, collapse ='+'), |
| ' | state') |
|
|
| return(as.formula(form)) |
| } |
|
|
| |
| m1 <- felm(formula_maker('prop_home_change_March',flat_data), data = flat_data) |
| m2 <- felm(formula_maker('prop_home_change_August',flat_data), data = flat_data) |
|
|
| |
| results_tab <- export_summs(m1, m2, |
| digits = 3, |
| model.names = c('March 19-April 1','August 16-29'), |
| coefs = c('Income per Capita (Thousands)' = 'income_per_capita', |
| 'Share of Trump Voters' = 'trump_share', |
| 'Percent Male' = 'male_percent', |
| 'Percent Black' = 'percent_black', |
| 'Percent Hispanic' = 'percent_hispanic', |
| 'Percent with College Degree' = 'percent_college', |
| 'Percent in Retail' = 'percent_retail', |
| 'Percent in Transportation' = 'percent_transportation', |
| 'Percent in Health / Ed / Soc. Svcs' = 'percent_hes', |
| 'Percent Rural' = 'prop_rural', |
| 'Percent Age 10-19' = 'ten_nineteen', |
| 'Percent Age 20-29' = 'twenty_twentynine', |
| 'Percent Age 30-39' = 'thirty_thirtynine', |
| 'Percent Age 40-49' = 'forty_fortynine', |
| 'Percent Age 50-59' = 'fifty_fiftynine', |
| 'Percent Age 60-69' = 'sixty_sixtynine', |
| 'Percent Age 70-79' = 'seventy_seventynine', |
| 'Percent Age 80+' = 'over_eighty'), |
| statistics = c(N = 'nobs', |
| R2 = 'r.squared')) %>% |
| add_footnote('More-positive numbers indicate more stay-at-home activity. State fixed effects included.') |
|
|
| quick_html(results_tab, file = 'regression_table.html') |
|
|
| |
| summary(glht(m1, paste0(trumpIQR,'*trump_share = 0'))) |
| summary(glht(m2, paste0(trumpIQR,'*trump_share = 0'))) |
|
|
| |
| { |
| library(tigris) |
| library(spdep) |
| library(sphet) |
| library(spatialreg) |
| } |
|
|
| |
| counties <- counties() |
| counties <- as_tibble(counties[,c('STATEFP','COUNTYFP','INTPTLAT','INTPTLON')]) %>% |
| mutate(fips = as.numeric(STATEFP)*1000 + as.numeric(COUNTYFP)) %>% |
| dplyr::select(-geometry, -STATEFP, -COUNTYFP) %>% |
| rename(lat = INTPTLAT, lon = INTPTLON) %>% |
| mutate(lat = as.numeric(lat), |
| lon = as.numeric(lon)) |
|
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| |
| flat_data <- left_join(flat_data, counties) |
|
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| |
| kn <- knearneigh(as.matrix(flat_data[,c('lon','lat'), with = FALSE]), 5) |
| nb <- knn2nb(kn) |
| listw <- nb2listw(nb) |
|
|
| |
| formula_maker <- function(depvar, data) { |
| vnames <- data %>% |
| dplyr::select(-fips, -prop_home_change_March, -prop_home_change_August) %>% |
| names() |
| |
| form <- paste0(depvar,'~', |
| paste(vnames, collapse ='+')) |
| |
| return(as.formula(form)) |
| } |
|
|
| |
| m3 <- lagsarlm(formula_maker('prop_home_change_March',flat_data), data = flat_data, listw = listw) |
| m4 <- lagsarlm(formula_maker('prop_home_change_August',flat_data), data = flat_data, listw = listw) |
|
|
| |
| results_tab <- export_summs(m3, m4, |
| digits = 3, |
| model.names = c('March 19-April 1','August 16-29'), |
| coefs = c('Income per Capita (Thousands)' = 'income_per_capita', |
| 'Share of Trump Voters' = 'trump_share', |
| 'Percent Male' = 'male_percent', |
| 'Percent Black' = 'percent_black', |
| 'Percent Hispanic' = 'percent_hispanic', |
| 'Percent with College Degree' = 'percent_college', |
| 'Percent in Retail' = 'percent_retail', |
| 'Percent in Transportation' = 'percent_transportation', |
| 'Percent in Health / Ed / Soc. Svcs' = 'percent_hes', |
| 'Percent Rural' = 'prop_rural', |
| 'Percent Age 10-19' = 'ten_nineteen', |
| 'Percent Age 20-29' = 'twenty_twentynine', |
| 'Percent Age 30-39' = 'thirty_thirtynine', |
| 'Percent Age 40-49' = 'forty_fortynine', |
| 'Percent Age 50-59' = 'fifty_fiftynine', |
| 'Percent Age 60-69' = 'sixty_sixtynine', |
| 'Percent Age 70-79' = 'seventy_seventynine', |
| 'Percent Age 80+' = 'over_eighty', |
| 'rho' = 'rho'), |
| statistics = c(N = 'nobs', |
| R2 = 'r.squared')) %>% |
| add_footnote('More-positive numbers indicate more stay-at-home activity.\nState fixed effects included.\nSpatial autocorrelation included with 5-nearest-neighbor neighbors.') |
|
|
| quick_html(results_tab, file = 'spatial_regression_table.html') |
|
|