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abjData

R build status CRAN status

Overview

This package contains a set of databases frequently used by ABJ.

The data included comes from the Human Development Index of the municipalities, collected from the Human Development Atlas and cartographic databases.

The purpose of the package is to make databases available for quick use in other projects and as a resource for the Jurimetrics book.

Installation

install.packages("abjData")
## dev version
# remotes::install_github("abjur/abjData")

Available datasets

Dataset Description
assuntos Data that contains information about case types.
cadmun (LEGACY) A dataset that contains the municipality codes.
muni Useful data from municipalities to join with other databases.
pnud_muni A dataset containing UNDP information from municipalities by years.
pnud_min Minimal base of UNDP municipalities to make quick studies.
pnud_siglas A dataset that serves as a glossary of available acronyms.
pnud_uf A dataset that contains information about UNDP of Federative Units.
leiloes Auctions dataset used in our book.
consumo Consumer cases dataset used in our book.

How to use

Once installed, just load the package and call the dataset you want to use.

The {abjData} package can be loaded like any other R package:

library(abjData)
library(tidyverse)
glimpse(pnud_siglas)
#> Rows: 8
#> Columns: 4
#> $ sigla      <chr> "espvida", "gini", "rdpc", "pop", "idhm", "idhm_e", "idhm_l…
#> $ nome_curto <chr> "Esperança de vida ao nascer", "Índice de Gini", "Renda per…
#> $ nome_longo <chr> "Esperança de vida ao nascer", "Índice de Gini", "Renda per…
#> $ definicao  <chr> "Número médio de anos que as pessoas deverão viver a partir…

Chart examples

Municipal Human Development Index:

pnud_min |>
  pivot_longer(starts_with("idhm")) |> 
  mutate(tipo = case_when(
    name == "idhm" ~ "Geral",
    name == "idhm_e" ~ "Education",
    name == "idhm_l" ~ "Longevity",
    name == "idhm_r" ~ "Income"
  )) |> 
  mutate(
    regiao_nm = fct_reorder(regiao_nm, value, median, .desc = TRUE),
    tipo = lvls_reorder(tipo, c(2, 1, 3, 4))
  ) |> 
  ggplot() +
  geom_boxplot(
    aes(value, regiao_nm), 
    colour = "#102C68", 
    fill = "#7AD151"
  ) +
  facet_wrap(~tipo) +
  theme(legend.position = "none") +
  theme_bw(12) +
  labs(
    x = "IDHM", 
    y = "Region"
  )

Position of municipalities:

muni |> 
  ggplot(aes(lon, lat)) +
  geom_point(size = .1, colour = viridis::viridis(2, begin = .2, end = .8)[1]) +
  coord_equal() +
  theme_void()

Requirements

{abjData} requires R version greater than or equal to 3.4.

License

{abjData} is licensed under the MIT License.

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.
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