textmineR 3.0.4
This version is a patch. In this version I have
- Removed unconditional stripping in MAKEVARs as specified by CRAN
- Improved outputs of FitLdaModel
textmineR 3.0.3
This version is a patch. In this version I have
- fixed an error related to the update.lda_topic_modelmethod.
- added a method posterior.lda_topic_modelto sample from the posterior of an LDA topic model.
textmineR 3.0.2
This version is a patch. In this version I have
- changed some elements of NAMESPACE to pass additional CRAN checks.
- added an update method for the lda_topic_model class. This allows users to add documents to an existing model (and even add new topics) without chaning the indices of previously-trained topics. e.g. topic 5 is still topic 5.
- added a vignette for using tidytextalongsidetextmineR
textmineR 3.0.1
This version is a patch in response to issues revealed by automatic checks upon submission to CRAN plus an additional issue I encountered along the way.
I have * Used the CRAN template for my MIT LICENSE file * Modified the example of the LabelTopics function to speed up run time for that example * Modified vignettes to run in less time * Added a Makevars file to keep compiled code small on Ubuntu.
Please read below for major updates between v2.x.x and v3.x.x
textmineR 3.0.0
This version significantly changes textmineR.
- Several functions that were slated for deletion in version 2.1.3 are now gone.
- RecursiveRbind
- Vec2Dtm
- JSD
- HellDist
- GetPhiPrime
- FormatRawLdaOutput
- Files2Vec
- DepluralizeDtm
- CorrectS
- CalcPhiPrime
 
- FitLdaModel has changed significantly.
- Now only Gibbs sampling is a supported training method. The Gibbs sampler is no longer wrapping lda::lda_collapsed_gibbs_sampler. It is now native to textmineR. It’s a little slower, but has additional features.
- Asymmetric priors are supported for both alpha and beta.
- There is an option, optimize_alpha, which updates alpha every 10 iterations based on the value of theta at the current iteration.
- The log likelihood of the data given estimates of phi and theta is optionally calculated every 10 iterations.
- Probabilistic coherence is optionally calculated at the time of model fit.
- R-squared is optionally calculated at the time of model fit.
 
- Supported topic models (LDA, LSA, CTM) are now object-oriented, creating their own S3 classes. These classes have their own predict methods, meaning you do not have to do your own math to make predictions for new documents. 
- A new function SummarizeTopics has been added. 
- tm is no longer a dependency for stopwords. We now use the stopwords package. The extended result of this is that there is no longer any Java dependency. 
- Several packages have been moved from “Imports” to “Suggests”. The result is a faster install and lower likelihood of install failure based on packages with system dependencies. (Looking at you, topicmodels!) 
- Finally, I have changed the textmineR license to the MIT license. Note, however, that some dependencies may have more restrictive licenses. So if you’re looking to use textmineR in a commercial project, you may want to dig deeper into what is/isn’t permissable. 
textmineR 2.1.3
- Deprecating functions that will be removed, renamed, or have significant changes to syntax or functionality in the forthcoming textmineR v3.0.
- Functions slated for deletion:
- RecursiveRbind
- Vec2Dtm
- JSD
- HellDist
- GetPhiPrime
- FormatRawLdaOutput
- Files2Vec
- DepluralizeDtm
- CorrectS
- CalcPhiPrime
 
- In addition: FitLdaModel is going to change significantly in its functionality and argument calls.
textmineR 2.1.2
- Deprecated RecursiveRbind - it depended on a deprecated function from the Matrix package. And the replacement offered by Matrix operates recursively, making this function truly superfluous.
textmineR 2.1.1
- Corrected some code in the vignettes that caused errors on Linux machines.
textmineR 2.1.0
- Added vignettes for common use cases of textmineR
- Modified averaging for CalcProbCoherence
- Updated documentation to CreateTcm
textmineR 2.0.6
- Back-end changes to CreateTcm in response to new text2vecAPI. Functionality is unchanged.
- Changes to how the package interfaces with Rcpp
textmineR 2.0.5
- Add verboseoption toCreateDtmandCreateTcmto surpress status messages.
- Add function GetVocabFromDtmto gettext2vecvocabulary object from adgCMatrixdocument term matrix.
textmineR 2.0.4
- Patching errors introduced in version 2.0.3
textmineR 2.0.3
- Patches to CreateDtmandCreateTcmin response to updates totext2vec.
- More formal update to take advantage of text2vec’s latest optimizations to follow.
textmineR 2.0.2
- Patched CreateDtmandCreateTcm. remove_punctuation now supports non-English characters.
- Patched TmParallelApply. Added an option to declare the environment to search for your export list. Default to that argument just searches the local environment. The default should cover ~95% of use cases. (And avoids crash on Windows OS)
- Patched FitLdaModel. Use of the...argument now allows you to controlTmParallelApply,lda::lda.collapsed.gibbs.sampler, andtopicmodels::LDAwithout error.
- Patched FitCtmModelwhere the...argument now goes totopicmodels::CTM’scontrolargument.
- Patched CreateTcmto return objects of classdgCMatrix. This allows you to run functions likeFitLdaModelon a TCM.
- Switched from irlba to RSpectra for LSA models because RSpectra’s implementation is much faster.
textmineR 2.0.1
- Patched CreateDtm and CreateTcm. An error caused stopwords to not be removed
textmineR 2.0.0
- Vec2Dtm is now deprecated in favor of CreateDtm
- A function, CreateTcm, now exists to create term co-occurence matrices
- CreateDtm and CreateTcm are implemented with a parallel C++ back end through the text2vec library
- the implementation is much faster! I’ve clocked 2X - 10X speedups, depending on options
- adds external dependencies - C++ compiler and GNU make - and takes away an external dependency - Java.
- now all tokens will be included, regardless of length. (tm’s framework silently dropped all tokens of fewer than 3 characters.)
 
- Allow generic stemming and stopwords in CreateDtm & CreateTcm
- Now there is only one argument for stopwords, making it clearer how to use custom or non-English stopwords
- Now the stemming argument allows for passing of stem/lemmatization functions.
 
- Function for fitting correlated topic models
- Function to turn a document term matrix to term co-occurence matrix
- Allowed LabelTopics to use unigrams, if you want. (n-grams are still better.)
- More robust error checking for CalcTopicModelR2 and CalcLikelihood
- All function arguments use "_“, not”.".
- CalcPhiPrime replaces (the now deprecated) GetPhiPrime
- Allows you to pass an argument to specify non-uniform probabilities of each document
 
- Similarly, CalcHellingerDist and CalcJSDivergence replace HellDist and JSD. This is to conform to a naming convention where functions are “verbs”.
textmineR 1.7.0
- Added modeling capability for latent semantic analysis in FitLsaModel()
- Added CalcProbCoherence() function which replaces ProbCoherence() and can calculate probabilistic coherence for the whole phi matrix.
- Added data from NIH research grants instead of borrowd data from tm
- Removed qcq data
- Added variational em method for FitLdaModel()
- Added function to represent document clustering as a topic model Cluster2TopicModel()
textmineR 1.6.0
- Add deprecation warning to ProbCoherence
- Allow for arguments of number of cores to be passed to every function that uses implicit parallelziation
- Allow for passing of libraries to TmParallelApply (makes this function truely independent of textmineR)
- For Vec2Dtm ensure that stopwords and custom stopwords are lowercased when lower = TRUE
- Update README example to use model caches