bigartm

BigARTM: the state-of-the-art platform for topic modeling


Keywords
bigartm, bigdata, c-plus-plus, machine-learning, python, python-api, regularizer, text-mining, topic-modeling
License
BSD-3-Clause
Install
pip install bigartm==0.9.2

Documentation

BigARTM Logo

The state-of-the-art platform for topic modeling.

Build Status Windows Build Status GitHub license DOI

What is BigARTM?

BigARTM is a powerful tool for topic modeling based on a novel technique called Additive Regularization of Topic Models. This technique effectively builds multi-objective models by adding the weighted sums of regularizers to the optimization criterion. BigARTM is known to combine well very different objectives, including sparsing, smoothing, topics decorrelation and many others. Such combination of regularizers significantly improves several quality measures at once almost without any loss of the perplexity.

References

Related Software Packages

  • TopicNet is a high-level interface for BigARTM which is helpful for rapid solution prototyping and for exploring the topics of finished ARTM models.
  • David Blei's List of Open Source topic modeling software
  • MALLET: Java-based toolkit for language processing with topic modeling package
  • Gensim: Python topic modeling library
  • Vowpal Wabbit has an implementation of Online-LDA algorithm

Installation

Installing with pip (Linux only)

We have a PyPi release for Linux:

$ pip install bigartm

or

$ pip install bigartm10

Installing on Windows

We suggest using pre-build binaries.

It is also possible to compile C++ code on Windows you want the latest development version.

Installing on Linux / MacOS

Download binary release or build from source using cmake:

$ mkdir build && cd build
$ cmake ..
$ make install

See here for detailed instructions.

How to Use

Command-line interface

Check out documentation for bigartm.

Examples:

  • Basic model (20 topics, outputed to CSV-file, inferred in 10 passes)
bigartm.exe -d docword.kos.txt -v vocab.kos.txt --write-model-readable model.txt
--passes 10 --batch-size 50 --topics 20
  • Basic model with less tokens (filtered extreme values based on token's frequency)
bigartm.exe -d docword.kos.txt -v vocab.kos.txt --dictionary-max-df 50% --dictionary-min-df 2
--passes 10 --batch-size 50 --topics 20 --write-model-readable model.txt
  • Simple regularized model (increase sparsity up to 60-70%)
bigartm.exe -d docword.kos.txt -v vocab.kos.txt --dictionary-max-df 50% --dictionary-min-df 2
--passes 10 --batch-size 50 --topics 20  --write-model-readable model.txt 
--regularizer "0.05 SparsePhi" "0.05 SparseTheta"
  • More advanced regularize model, with 10 sparse objective topics, and 2 smooth background topics
bigartm.exe -d docword.kos.txt -v vocab.kos.txt --dictionary-max-df 50% --dictionary-min-df 2
--passes 10 --batch-size 50 --topics obj:10;background:2 --write-model-readable model.txt
--regularizer "0.05 SparsePhi #obj"
--regularizer "0.05 SparseTheta #obj"
--regularizer "0.25 SmoothPhi #background"
--regularizer "0.25 SmoothTheta #background" 

Interactive Python interface

BigARTM supports full-featured and clear Python API (see Installation to configure Python API for your OS).

Example:

import artm

# Prepare data
# Case 1: data in CountVectorizer format
from sklearn.feature_extraction.text import CountVectorizer
from sklearn.datasets import fetch_20newsgroups
from numpy import array

cv = CountVectorizer(max_features=1000, stop_words='english')
n_wd = array(cv.fit_transform(fetch_20newsgroups().data).todense()).T
vocabulary = cv.get_feature_names()

bv = artm.BatchVectorizer(data_format='bow_n_wd',
                          n_wd=n_wd,
                          vocabulary=vocabulary)

# Case 2: data in UCI format (https://archive.ics.uci.edu/ml/datasets/Bag+of+Words)
bv = artm.BatchVectorizer(data_format='bow_uci',
                          collection_name='kos',
                          target_folder='kos_batches')

# Learn simple LDA model (or you can use advanced artm.ARTM)
model = artm.LDA(num_topics=15, dictionary=bv.dictionary)
model.fit_offline(bv, num_collection_passes=20)

# Print results
model.get_top_tokens()

Refer to tutorials for details on how to start using BigARTM from Python, user's guide can provide information about more advanced features and cases.

Low-level API

Contributing

Refer to the Developer's Guide and follows Code Style.

To report a bug use issue tracker. To ask a question use our mailing list. Feel free to make pull request.

License

BigARTM is released under New BSD License that allowes unlimited redistribution for any purpose (even for commercial use) as long as its copyright notices and the license’s disclaimers of warranty are maintained.