| CalcGamma | Calculate a matrix whose rows represent P(topic_i|tokens) |
| CalcHellingerDist | Calculate Hellinger Distance |
| CalcJSDivergence | Calculate Jensen-Shannon Divergence |
| CalcLikelihood | Calculate the log likelihood of a document term matrix given a topic model |
| CalcLikelihoodC | Internal helper functions for 'textmineR' |
| CalcProbCoherence | Probabilistic coherence of topics |
| CalcSumSquares | Internal helper functions for 'textmineR' |
| CalcTopicModelR2 | Calculate the R-squared of a topic model. |
| Cluster2TopicModel | Represent a document clustering as a topic model |
| CreateDtm | Convert a character vector to a document term matrix. |
| CreateTcm | Convert a character vector to a term co-occurrence matrix. |
| Dtm2Docs | Convert a DTM to a Character Vector of documents |
| Dtm2DocsC | Internal helper functions for 'textmineR' |
| Dtm2Lexicon | Turn a document term matrix into a list for LDA Gibbs sampling |
| Dtm2Tcm | Turn a document term matrix into a term co-occurrence matrix |
| dtm_to_lexicon_c | Internal helper functions for 'textmineR' |
| FitCtmModel | Fit a Correlated Topic Model |
| FitLdaModel | Fit a Latent Dirichlet Allocation topic model |
| FitLsaModel | Fit a topic model using Latent Semantic Analysis |
| fit_lda_c | Internal helper functions for 'textmineR' |
| GetProbableTerms | Get cluster labels using a "more probable" method of terms |
| GetTopTerms | Get Top Terms for each topic from a topic model |
| HellingerMat | Internal helper functions for 'textmineR' |
| Hellinger_cpp | Internal helper functions for 'textmineR' |
| JSDmat | Internal helper functions for 'textmineR' |
| JSD_cpp | Internal helper functions for 'textmineR' |
| LabelTopics | Get some topic labels using a "more probable" method of terms |
| nih | Abstracts and metadata from NIH research grants awarded in 2014 |
| nih_sample | Abstracts and metadata from NIH research grants awarded in 2014 |
| nih_sample_dtm | Abstracts and metadata from NIH research grants awarded in 2014 |
| nih_sample_topic_model | Abstracts and metadata from NIH research grants awarded in 2014 |
| posterior | Posterior methods for topic models |
| posterior.lda_topic_model | Draw from the posterior of an LDA topic model |
| predict.ctm_topic_model | Predict method for Correlated topic models (CTM) |
| predict.lda_topic_model | Get predictions from a Latent Dirichlet Allocation model |
| predict.lsa_topic_model | Predict method for LSA topic models |
| predict_lda_c | Internal helper functions for 'textmineR' |
| SummarizeTopics | Summarize topics in a topic model |
| TermDocFreq | Get term frequencies and document frequencies from a document term matrix. |
| textmineR | textmineR |
| TmParallelApply | An OS-independent parallel version of 'lapply' |
| update | Update methods for topic models |
| update.lda_topic_model | Update a Latent Dirichlet Allocation topic model with new data |