Variational Learning for the Inverted Beta-Liouville Mixture Model and Its Application to Text Categorization

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Abstract
The finite invert Beta-Liouville mixture model (IBLMM) has recently gained some attention due to its positive data modeling capability. Under the conventional variational inference (VI) framework, the analytically tractable solution to the optimization of the variational posterior distribution cannot be obtained, since the variational object function involves evaluation of intractable moments. With the recently proposed extended variational inference (EVI) framework, a new function is proposed to replace the original variational object function in order to avoid intractable moment computation, so that the analytically tractable solution of the IBLMM can be derived in an effective way. The good performance of the proposed approach is demonstrated by experiments with both synthesized data and a real-world application namely text categorization.
Year of Publication
2022
Journal
International Journal of Interactive Multimedia and Artificial Intelligence
Volume
7
Issue
Special Issue on Multimedia Streaming and Processing in Internet of Things with Edge Intelligence
Number
5
Number of Pages
76-84
Date Published
09/2022
ISSN Number
1989-1660
URL
DOI
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