| find_lda | R Documentation |
Find the optimal hyperparameter k for your LDA model
find_lda(pooled_dfm, search_space = seq(1, 10, 2), method = "Gibbs", ...)
pooled_dfm |
object of class dfm (see dfm) containing (pooled) tweets |
search_space |
Vector with number of topics to compare different models. |
method |
The method to be used for fitting. Currently method = "VEM" or method = "Gibbs" are supported. |
... |
Additional arguments passed to FindTopicsNumber. |
Plot with different metrics compared.
FindTopicsNumber
## Not run:
library(Twitmo)
# load tweets (included in package)
mytweets <- load_tweets(system.file("extdata", "tweets_20191027-141233.json", package = "Twitmo"))
# Pool tweets into longer pseudo-documents
pool <- pool_tweets(data = mytweets)
pooled_dfm <- pool$document_term_matrix
# use the ldatuner to compare different K
find_lda(pooled_dfm, search_space = seq(1, 10, 1), method = "Gibbs")
## End(Not run)
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