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fec16 contains data from the Federal Election Commission (FEC) website pertaining to candidates, committees, results, contributions from committees and individuals, and other financial data for the United States 2015-2016 election cycle. Additionally, for the datasets that are included as samples, the package includes functions that import the full versions.
Get the latest released version from CRAN:
Or the development version from GitHub:
# If you haven't installed the remotes package yet, do so:
# install.packages("remotes")
remotes::install_github("baumer-lab/fec16")candidates: candidates registered with the FEC during the 2015-2016 election cyclecommittees: committees registered with the FEC during the 2015-2016 election cyclecampaigns: the House/Senate current campaignsresults_house: the House results of the 2016 general electionresults_senate: the Senate results of the 2016 general electionresults_president: the final results of the 2016 general electionpac: Political Action Committee (PAC) and party summary financial informationindividuals: individual contributions to candidates/committees during the 2016 election cyclecontributions: candidates and their contributions from committees during the 2016 election cycleexpenditures: the operating expenditurestransactions: transactions between committeesThe following functions retrieve the entire datasets for the sampled ones listed above. The size of the raw file that is downloaded by calling each function is given for reference. All functions have an argument n_max which defaults to the entire dataset but the user can specify the max length of the dataset to be loaded via this argument.
read_all_individuals() ~ 1.45GBread_all_contributions() ~ 15.4MBread_all_expenditures() ~ 52.1MBread_all_transactions() ~ 79.2MBfec16 can be used to summarize data in order see how many candidates are running for elections (in all offices) for the two major parties:
library(dplyr)
data <- candidates %>%
filter(cand_pty_affiliation %in% c("REP", "DEM")) %>%
group_by(cand_pty_affiliation) %>%
summarize(size = n())
data
#> # A tibble: 2 x 2
#> cand_pty_affiliation size
#> <chr> <int>
#> 1 DEM 1270
#> 2 REP 1495We can visualize the above data:
library(ggplot2)
ggplot(data, aes(x = cand_pty_affiliation, y = size, fill = cand_pty_affiliation)) +
geom_col() +
labs(
title = "Number of Candidates Affiliated with the Two Major Parties",
x = "Party", y = "Count", fill = "Candidate Party Affiliation"
)