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Conference Papers Year : 2003

Bayesian feature weighting for unsupervised learning, with application to object recognition

Abstract

We present a method for variable selection/weighting in an unsupervised learning context using Bayesian shrinkage. The basis for the model parameters and cluster assignments can be computed simultaneous using an efficient EM algorithm. Applying our Bayesian shrinkage model to a complex problem in object recognition (Duygulu, Barnard, de Freitas and Forsyth 2002), our experiments yied good results.

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Dates and versions

inria-00548235 , version 1 (20-12-2010)

Identifiers

  • HAL Id : inria-00548235 , version 1

Cite

Peter Carbonetto, Nando de Freitas, Paul Gustafson, Natalie Thompson. Bayesian feature weighting for unsupervised learning, with application to object recognition. Artificial Intelligence and Statistics (AI & Statistics '03), Microsoft, Jan 2003, Key West, United States. ⟨inria-00548235⟩
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