Denis Turdakov created SPARK-2199:
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             Summary: Distributed probabilistic latent semantic analysis in 
MLlib
                 Key: SPARK-2199
                 URL: https://issues.apache.org/jira/browse/SPARK-2199
             Project: Spark
          Issue Type: Improvement
          Components: MLlib
    Affects Versions: 1.1.0
            Reporter: Denis Turdakov


Probabilistic latent semantic analysis (PLSA) is a topic model which extracts 
topics from text corpus. PLSA was historically a predecessor of LDA. However 
recent research shows that modifications of PLSA sometimes performs better then 
LDA[1]. Furthermore, the most recent paper by same authors shows that there is 
a clear way to extend PLSA to LDA and beyond[2].
We should implement distributed versions of PLSA. In addition it should be 
possible  to easily add user defined regularizers or combination of them. We 
will implement regularizers that allows
•       extract sparse topics
•       extract human interpretable topics 
•       perform semi-supervised training 
•       sort out non-topic specific terms. 

[1] Potapenko, K. Vorontsov. 2013. Robust PLSA performs better than LDA. In 
Proceedings of ECIR'13.
[2] Vorontsov, Potapenko. Tutorial on Probabilistic Topic Modeling: Additive 
Regularization for Stochastic Matrix Factorization. 
http://www.machinelearning.ru/wiki/images/1/1f/Voron14aist.pdf 




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