DocumentCode
1754494
Title
Exponential Family Factors for Bayesian Factor Analysis
Author
Jun Li ; Dacheng Tao
Author_Institution
Centre for Quantum Comput. & Intell. Syst., Univ. of Technol., Sydney, NSW, Australia
Volume
24
Issue
6
fYear
2013
fDate
41426
Firstpage
964
Lastpage
976
Abstract
Expressing data as linear functions of a small number of unknown variables is a useful approach employed by several classical data analysis methods, e.g., factor analysis, principal component analysis, or latent semantic indexing. These models represent the data using the product of two factors. In practice, one important concern is how to link the learned factors to relevant quantities in the context of the application. To this end, various specialized forms of the factors have been proposed to improve interpretability. Toward developing a unified view and clarifying the statistical significance of the specialized factors, we propose a Bayesian model family. We employ exponential family distributions to specify various types of factors, which provide a unified probabilistic formulation. A Gibbs sampling procedure is constructed as a general computation routine. We verify the model by experiments, in which the proposed model is shown to be effective in both emulating existing models and motivating new model designs for particular problem settings.
Keywords
Bayes methods; data analysis; data structures; principal component analysis; Bayesian factor analysis; Bayesian model family; Gibbs sampling procedure; data analysis methods; data representation; exponential family distributions; exponential family factors; factor analysis; latent semantic indexing; linear functions; principal component analysis; probabilistic formulation; unknown variables; Analytical models; Bayes methods; Computational modeling; Context; Data models; Principal component analysis; Probabilistic logic; Bayesian methods; exponential family distributions; principal component analysis; statistical learning;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2245341
Filename
6477146
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