LabelTopics {textmineR} | R Documentation |
Get some topic labels using a "more probable" method of terms
Description
Function calls GetProbableTerms
with some
rules to get topic labels. This function is in "super-ultra-mega alpha"; use
at your own risk/discretion.
Usage
LabelTopics(assignments, dtm, M = 2)
Arguments
assignments |
A documents by topics matrix similar to |
dtm |
A document term matrix of class |
M |
The number of n-gram labels you want to return. Defaults to 2 |
Value
Returns a matrix
whose rows correspond to topics and whose
j-th column corresponds to the j-th "best" label assignment.
Examples
# make a dtm with unigrams and bigrams
data(nih_sample_topic_model)
m <- nih_sample_topic_model
assignments <- t(apply(m$theta, 1, function(x){
x[ x < 0.05 ] <- 0
x / sum(x)
}))
assignments[is.na(assignments)] <- 0
labels <- LabelTopics(assignments = assignments, dtm = m$data, M = 2)
[Package textmineR version 3.0.5 Index]