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| rm(list=ls()) |
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| library(plyr);library(dplyr, warn.conflicts = FALSE) |
| library(tidyr);library(ggplot2) |
| suppressMessages(library(multiwayvcov, warn.conflicts = F)) |
| suppressMessages(library(lmtest, warn.conflicts = F)) |
| suppressMessages(library(stargazer)) |
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| s = function(x){summary(factor(x))} |
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| A = readRDS('4-20-20_Network-KNearest_DeID_demed.RDS') |
| |
| H = read.csv('4-20-20_deid_nearestK.csv', |
| na.strings=c('','NA'),strip.white=T,stringsAsFactors = F) |
| Hprime = H[H$A.A7_Area.Neighborhood %in% names(which(table(H$A.A7_Area.Neighborhood) >= 30)),] |
| Hprime = Hprime[which(!is.na(Hprime$A.A7_Area.Neighborhood)),] |
| Hprime = Hprime[which(Hprime$A.A7_Area.Neighborhood != 'Bangalore NA'),] |
| H = Hprime; rm(Hprime) |
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| A$Job = mapvalues(A$D.D1_Occupation, |
| from = c(12, |
| 13, |
| 19, |
| 2, |
| 20, |
| 21, |
| 3, |
| 4, |
| 6, |
| 7, |
| 9), |
| to = c('Garbage', |
| 'Gardener', |
| 'Security', |
| 'Butcher', |
| 'Tailor', |
| 'Vendor', |
| 'Carpenter', |
| 'Construction', |
| 'Cook', |
| 'Corporate', |
| 'Electrician')) |
|
|
| H$Job = mapvalues(H$D.D1_Occupation., |
| from = c(1, |
| 2, |
| 3, |
| 4, |
| 5, |
| 6, |
| 7, |
| 8, |
| 9, |
| 10, |
| 11, |
| 12, |
| 13, |
| 14, |
| 15, |
| 16, |
| 17, |
| 18, |
| 19, |
| 20, |
| 21, |
| 22, |
| 23, |
| 24, |
| 25, |
| 26, |
| 27), |
| to = c('Agriculture', |
| 'Butcher', |
| 'Carpenter', |
| 'Construction', |
| 'Labour', |
| 'Cook', |
| 'Corporation', |
| 'Driver', |
| 'Electrical', |
| 'Factory', |
| 'Flower', |
| 'Garbage', |
| 'Gardener', |
| 'Maid', |
| 'Mechanic', |
| 'Painter', |
| 'ProfessionalSvc', |
| 'Grocessory', |
| 'Security', |
| 'Tailor', |
| 'Vendor', |
| 'Government', |
| 'Housewife', |
| 'Student', |
| 'Other', |
| NA, NA )) |
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| sort (s(A$Job) / sum(!is.na(A$Job )) * 100 , decreasing = T) %>% round(2) |
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| sort (s(H$Job) / sum(!is.na(H$Job )) * 100 , decreasing = T) %>% round(2) |
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