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Produces counts and document frequencies summaries of the features in a dfm, optionally grouped by a docvars variable or other supplied grouping variable.
textstat_frequency(
x,
n = NULL,
groups = NULL,
ties_method = c("min", "average", "first", "random", "max", "dense"),
...
)
a dfm object
(optional) integer specifying the top n
features to be returned,
within group if groups
is specified
either: a character vector containing the names of document variables to be used for grouping; or a factor or object that can be coerced into a factor equal in length or rows to the number of documents. See groups for details.
character string specifying how ties are treated. See
frank
for details. Unlike that function,
however, the default is "min"
, so that frequencies of 10, 10, 11
would be ranked 1, 1, 3.
additional arguments passed to dfm_group
. This can
be useful in passing `force = TRUE`, for instance, if you are grouping a
dfm that has been weighted.
a data.frame containing the following variables:
feature
(character) the feature
frequency
count of the feature
rank
rank of the feature, where 1 indicates the greatest frequency
docfreq
document frequency of the feature, as a count (the number of documents in which this feature occurred at least once)
docfreq
document frequency of the feature, as a count
group
(only if groups
is specified) the label of the group.
If the features have been grouped, then all counts, ranks, and document
frequencies are within group. If groups is not specified, the group
column is omitted from the returned data.frame.
textstat_frequency
returns a data.frame of features and
their term and document frequencies within groups.
# NOT RUN {
set.seed(20)
dfmat1 <- dfm(c("a a b b c d", "a d d d", "a a a"))
textstat_frequency(dfmat1)
textstat_frequency(dfmat1, groups = c("one", "two", "one"), ties_method = "first")
textstat_frequency(dfmat1, groups = c("one", "two", "one"), ties_method = "dense")
dfmat2 <- corpus_subset(data_corpus_inaugural, President == "Obama") %>%
dfm(remove_punct = TRUE, remove = stopwords("english"))
tstat1 <- textstat_frequency(dfmat2)
head(tstat1, 10)
# }
# NOT RUN {
# plot 20 most frequent words
library("ggplot2")
ggplot(tstat1[1:20, ], aes(x = reorder(feature, frequency), y = frequency)) +
geom_point() +
coord_flip() +
labs(x = NULL, y = "Frequency")
# plot relative frequencies by group
dfmat3 <- data_corpus_inaugural %>%
corpus_subset(Year > 2000) %>%
dfm(remove = stopwords("english"), remove_punct = TRUE) %>%
dfm_group(groups = "President") %>%
dfm_weight(scheme = "prop")
# calculate relative frequency by president
tstat2 <- textstat_frequency(dfmat3, n = 10, groups = "President")
# plot frequencies
ggplot(data = tstat2, aes(x = factor(nrow(tstat2):1), y = frequency)) +
geom_point() +
facet_wrap(~ group, scales = "free") +
coord_flip() +
scale_x_discrete(breaks = nrow(tstat2):1,
labels = tstat2$feature) +
labs(x = NULL, y = "Relative frequency")
# }
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