An R package to analyze the parliamentary records of the 19th legislative period of the Bundestag, the German parliament.
Nevar pievienot vairāk kā 25 tēmas Tēmai ir jāsākas ar burtu vai ciparu, tā var saturēt domu zīmes ('-') un var būt līdz 35 simboliem gara.

51 rinda
1.4KB

  1. #' @export
  2. find_word <- function(res, word) {
  3. talks <- res$talks
  4. mutate(talks, occurences = sapply(str_match_all(talks$content, regex(word, ignore_case = TRUE)),
  5. nrow))
  6. }
  7. #' @export
  8. join_redner <- function(tb, res, fraktion_only = F) {
  9. joined <- left_join(tb, res$redner, by=c("redner" = "id"))
  10. if (fraktion_only) select(joined, "fraktion")
  11. else joined
  12. }
  13. party_colors <- c(
  14. SPD="#DF0B25",
  15. "CDU/CSU"="#000000",
  16. AfD="#1A9FDD",
  17. "AfD&Fraktionslos"="#1A9FDD",
  18. "DIE LINKE"="#BC3475",
  19. "BÜNDNIS 90 / DIE GRÜNEN"="#4A932B",
  20. FDP="#FEEB34",
  21. Fraktionslos="#FEEB34"
  22. )
  23. #' @export
  24. bar_plot_fraktionen <- function(tb) {
  25. ggplot(tb, aes(x = reorder(fraktion, -n), y = n, fill = fraktion)) +
  26. scale_fill_manual(values = party_colors) +
  27. geom_bar(stat = "identity")
  28. }
  29. # Counts how many talks do match a given pattern and summarises by date
  30. #
  31. #' @export
  32. word_usage_by_date <- function(res, patterns, name, tidy=F) {
  33. tb <- res$talks
  34. nms <- names(patterns)
  35. for (i in seq_along(patterns)) {
  36. if (!is.null(nms)) name <- nms[[i]]
  37. else name <- patterns[[i]]
  38. tb <- mutate(tb, {{name}} := str_count(content, patterns[[i]]))
  39. }
  40. left_join(tb, res$reden, by=c("rede_id" = "id")) %>%
  41. group_by(date) %>%
  42. summarize(across(where(is.numeric), sum)) %>%
  43. arrange(date) -> tb
  44. if (!tidy) pivot_longer(tb, where(is.numeric) , names_to = "pattern", values_to="count")
  45. else tb
  46. }