DocumentCode
1147178
Title
A Model-Based Approach for Discrete Data Clustering and Feature Weighting Using MAP and Stochastic Complexity
Author
Bouguila, Nizar
Author_Institution
Concordia Inst. for Inf. Syst. Eng. (CIISE), Concordia Univ., Montreal, QC, Canada
Volume
21
Issue
12
fYear
2009
Firstpage
1649
Lastpage
1664
Abstract
In this paper, we consider the problem of unsupervised discrete feature selection/weighting. Indeed, discrete data are an important component in many data mining, machine learning, image processing, and computer vision applications. However, much of the published work on unsupervised feature selection has concentrated on continuous data. We propose a probabilistic approach that assigns relevance weights to discrete features that are considered as random variables modeled by finite discrete mixtures. The choice of finite mixture models is justified by its flexibility which has led to its widespread application in different domains. For the learning of the model, we consider both Bayesian and information-theoretic approaches through stochastic complexity. Experimental results are presented to illustrate the feasibility and merits of our approach on a difficult problem which is clustering and recognizing visual concepts in different image data. The proposed approach is successfully applied also for text clustering.
Keywords
computational complexity; pattern clustering; stochastic processes; Bayesian approach; MAP; discrete data clustering; finite discrete mixtures; information-theoretic approach; model-based approach; stochastic complexity; unsupervised discrete feature selection; unsupervised discrete feature weighting; Dirichlet prior; Discrete data; Fisher kernel; MAP; feature weighting/selection; finite mixture models; image databases; multinomial; stochastic complexity; text clustering.;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2009.42
Filename
4775896
Link To Document