lsa: Latent Semantic Analysis
The basic idea of latent semantic analysis (LSA) is, 
  that text do have a higher order (=latent semantic) structure which, 
  however, is obscured by word usage (e.g. through the use of synonyms 
  or polysemy). By using conceptual indices that are derived statistically 
  via a truncated singular value decomposition (a two-mode factor analysis) 
  over a given document-term matrix, this variability problem can be overcome. 
Documentation:
Downloads:
Reverse dependencies:
| Reverse depends: | AurieLSHGaussian, LSAfun | 
| Reverse imports: | conversim, CoreGx, DTWBI, DTWUMI, GeneNMF, IBCF.MTME, MD2sample, OmicsQC, OutSeekR, RESOLVE, SemanticDistance, WordListsAnalytics | 
| Reverse suggests: | quanteda, quanteda.textmodels, Signac, SpatialDDLS | 
Linking:
Please use the canonical form
https://CRAN.R-project.org/package=lsa
to link to this page.