rm(list=ls(all=t))
filename <- "Section_13" # !!!Update filename
functions_vers <- "functions_1.8.R" # !!!Update helper functions file
source (functions_vers)
Visually inspect variables in "dictionary.csv" and flag for risk, using the following flags:
# Direct PII: Respondent Names, Addresses, Identification Numbers, Phone Numbers
# Direct PII-team: Interviewer Names, other field team names
# Indirect PII-ordinal: Date of birth, Age, income, education, household composition.
# Indirect PII-categorical: Gender, education, ethnicity, nationality,
# occupation, employer, head of household, marital status
# GPS: Longitude, Latitude
# Small Location: Location (<100,000)
# Large Location (>100,000)
# Weight: weightVar
# Household ID: hhId,
# Open-ends: Review responses for any sensitive information, redact as necessary
# !!!No Direct PII
# !!!No Direct PII - team
# !!!No Small locations
# !!!No Indirect PII - Ordinal
# !!!Include relevant variables in list below (Indirect PII - Categorical, and Ordinal if not processed yet)
indirect_PII <- c("eh_s13q1",
"eh_s13q3",
"eh_s13q5",
"eh_s13q7",
"eh_s13q9",
"eh_s13q11",
"eh_s13q13",
"eh_s13q15",
"eh_s13q17",
"eh_s13q19",
"eh_s13q22")
capture_tables (indirect_PII)
# Recode those with very specific values.
# !!!No very specific values
# !!!Insufficient demographic data
# !!! Identify open-end variables here:
open_ends <- c("eh_s13q23")
report_open (list_open_ends = open_ends)
# Review "verbatims.csv". Identify variables to be deleted or redacted and their row number
# !!!Redacted, as some information is in Tagalog.
mydata$eh_s13q23[1802] <- "[language]"
mydata$eh_s13q23[1869] <- "[language]"
# !!!No GPS data
haven::write_dta(mydata, paste0(filename, "_PU.dta"))
haven::write_sav(mydata, paste0(filename, "_PU.sav"))
# Add report title dynamically
title_var <- paste0("DOL-ILAB SDC - ", filename)