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lares (version 4.8.4)

sentimentBreakdown: Sentiment Breakdown on Text

Description

This function searches for relevant words in a given text and adds sentiments labels (joy, anticipation, surprise, positive, trust, anger, sadness, fear, negative, disgust) for each of them, using NRC. Then, makes a summary for all words and plot results.

Usage

sentimentBreakdown(
  text,
  lang = "spanish",
  exclude = c("maduro", "que"),
  append_file = NA,
  append_words = NA,
  plot = TRUE,
  subtitle = NA
)

Arguments

text

Character vector

lang

Character. Language in text (used for stop words)

exclude

Character vector. Which word do you wish to exclude?

append_file

Character. Add a dictionary to append. This file must contain at least two columns, first with words and second with the sentiment (consider sentiments on description).

append_words

Dataframe. Same as append_file but appending data frame with word and sentiment directly

plot

Boolean. Plot results summary?

subtitle

Character. Add subtitle to the plot

See Also

Other Text Mining: cleanText(), replaceall(), textCloud(), textFeats(), textTokenizer(), topics_rake()