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Audit walkthrough

2) Libraries (minimal)

library(geoDeltaAudit)
library(dplyr)
library(stringr)
library(janitor)
## --- load toy baseline (relationship-defined) ---
acs_path <- system.file("extdata", "toy_acs_zcta_hennepin.csv", package = "geoDeltaAudit")
stopifnot(nchar(acs_path) > 0)

acs_zcta_hennepin <- readr::read_csv(acs_path, show_col_types = FALSE) %>%
  janitor::clean_names() %>%
  dplyr::mutate(zcta = stringr::str_pad(as.character(.data$zcta), 5, pad = "0"))

# Toy assoc: 1:1 ZCTA -> ZIP (same 5-digit IDs)
zcta_zip_hennepin <- acs_zcta_hennepin %>%
  dplyr::distinct(.data$zcta) %>%
  dplyr::transmute(zcta = .data$zcta, zip = .data$zcta) %>%
  dplyr::distinct()

assoc_structure <- zcta_zip_hennepin %>%
  dplyr::summarise(
    n_rows  = dplyr::n(),
    n_zctas = dplyr::n_distinct(.data$zcta),
    n_zips  = dplyr::n_distinct(.data$zip)
  )

assoc_structure
## # A tibble: 1 × 3
##   n_rows n_zctas n_zips
##    <int>   <int>  <int>
## 1     74      74     74

Association diagnostics

unmapped <- acs_zcta_hennepin %>%
  dplyr::anti_join(zcta_zip_hennepin %>% dplyr::distinct(.data$zcta), by = "zcta")

fanout_stats <- zcta_zip_hennepin %>%
  dplyr::count(.data$zcta, name = "n_zip") %>%
  dplyr::summarise(
    min    = min(.data$n_zip),
    median = median(.data$n_zip),
    mean   = mean(.data$n_zip),
    max    = max(.data$n_zip)
  )

list(
  n_unmapped_zctas = nrow(unmapped),
  fanout = fanout_stats
)
## $n_unmapped_zctas
## [1] 0
## 
## $fanout
## # A tibble: 1 × 4
##     min median  mean   max
##   <int>  <dbl> <dbl> <int>
## 1     1      1     1     1

What this vignette demonstrates

This vignette shows how geoDeltaAudit separates data values from geographic transformation rules.

The maps above visualize how identical source values can yield different spatial memberships depending on whether boundaries are defined by relationships or geometry. The numerical audit steps in other vignettes quantify the downstream effects of these choices.

This vignette is intentionally visual and descriptive. It does not perform transformations or inference.

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.