7 research outputs found

    Simultaneous feature selection and clustering using mixture models

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    A Robust Approach for Multivariate Binary Vectors Clustering and Feature Selection

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    International audienceGiven a set of binary vectors drawn from a ¯nite multiple Bernoulli mixture model, an important problem is to determine which vectors are outliers and which features are relevant. The goal of this paper is to propose a model for binary vectors clustering that accommo- dates outliers and allows simultaneously the incorporation of a feature selection methodology into the clustering process. We derive an EM al- gorithm to ¯t the proposed model. Through simulation studies and a set of experiments involving handwritten digit recognition and visual scenes categorization, we demonstrate the usefulness and e®ectiveness of our method

    Feature Selection for Local Learning Based Clustering

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