DocumentCode
11990
Title
Parsimonious Topic Models with Salient Word Discovery
Author
Soleimani, Hossein ; Miller, David J.
Author_Institution
Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA, USA
Volume
27
Issue
3
fYear
2015
fDate
March 1 2015
Firstpage
824
Lastpage
837
Abstract
We propose a parsimonious topic model for text corpora. In related models such as Latent Dirichlet Allocation (LDA), all words are modeled topic-specifically, even though many words occur with similar frequencies across different topics. Our modeling determines salient words for each topic, which have topic-specific probabilities, with the rest explained by a universal shared model. Further, in LDA all topics are in principle present in every document. By contrast, our model gives sparse topic representation, determining the (small) subset of relevant topics for each document. We derive a Bayesian Information Criterion (BIC), balancing model complexity and goodness of fit. Here, interestingly, we identify an effective sample size and corresponding penalty specific to each parameter type in our model. We minimize BIC to jointly determine our entire model-the topic-specific words, document-specific topics, all model parameter values, and the total number of topics-in a wholly unsupervised fashion. Results on three text corpora and an image dataset show that our model achieves higher test set likelihood and better agreement with ground-truth class labels, compared to LDA and to a model designed to incorporate sparsity.
Keywords
belief networks; probability; text analysis; BIC; Bayesian information criterion; LDA; image dataset; latent Dirichlet allocation; parsimonious topic models; salient word discovery; topic-specific probabilities; universal shared model; unsupervised fashion; Approximation methods; Bayes methods; Biological system modeling; Complexity theory; Computational modeling; Data models; Linear programming; Bayesian information criterion (BIC); model selection; parsimonious models; sparse models; topic models; unsupervised feature selection;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2014.2345378
Filename
6871387
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