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Decision boundary feature selection for non-parametric classifierFeature selection has been one of the most important topics in pattern recognition. Although many authors have studied feature selection for parametric classifiers, few algorithms are available for feature selection for nonparametric classifiers. In this paper we propose a new feature selection algorithm based on decision boundaries for nonparametric classifiers. We first note that feature selection for pattern recognition is equivalent to retaining 'discriminantly informative features', and a discriminantly informative feature is related to the decision boundary. A procedure to extract discriminantly informative features based on a decision boundary for nonparametric classification is proposed. Experiments show that the proposed algorithm finds effective features for the nonparametric classifier with Parzen density estimation.
Document ID
19930071801
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Lee, Chulhee
(NASA Headquarters Washington, DC United States)
Landgrebe, David A.
(Purdue Univ. West Lafayette, IN, United States)
Date Acquired
August 16, 2013
Publication Date
May 1, 1991
Subject Category
Cybernetics
Meeting Information
Meeting: Society for Imaging Science and Technology, Annual Conference
Location: Saint Paul, MN
Country: United States
Start Date: May 12, 1991
End Date: May 17, 1991
Sponsors: Society for Imaging Science and Technology
Accession Number
93A55798
Funding Number(s)
CONTRACT_GRANT: NAGW-925
Distribution Limits
Public
Copyright
Other

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