Feature Selection for Unsupervised Learning

Volume: 5, Pages: 845 - 889
Published: Dec 1, 2004
Abstract
In this paper, we identify two issues involved in developing an automated feature subset selection algorithm for unlabeled data: the need for finding the number of clusters in conjunction with feature selection, and the need for normalizing the bias of feature selection criteria with respect to dimension. We explore the feature selection problem and these issues through FSSEM (Feature Subset Selection using Expectation-Maximization (EM)...
Paper Details
Title
Feature Selection for Unsupervised Learning
Published Date
Dec 1, 2004
Volume
5
Pages
845 - 889
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