Mixed feature selection in incomplete decision table

Feature selection in incomplete decision table has gained considerable attention in recently. However many feature selection methods are mainly designed for incomplete data with categorical features. In this paper, we introduce an extended rough set model, which is based on neighborhood-tolerance re...

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Veröffentlicht in:Knowledge-based systems 2014-02, Vol.57, p.181-190
Hauptverfasser: Zhao, Hua, Qin, Keyun
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description Feature selection in incomplete decision table has gained considerable attention in recently. However many feature selection methods are mainly designed for incomplete data with categorical features. In this paper, we introduce an extended rough set model, which is based on neighborhood-tolerance relation and is applicable to incomplete data with mixed categorical and numerical features. Neighborhood-tolerance conditional entropy is proposed from this model, which is an uncertainty measure and can be used to evaluate feature subset. It is known that dependency is an important feature evaluation measure based on rough set theory. The comparison and analysis of classification complexity are made between the two measures and it is indicated that neighborhood-tolerance conditional entropy is a more effective feature evaluation criterion than dependency in incomplete decision table. Then the heuristic feature selection algorithm based on neighborhood-tolerance conditional entropy is constructed. Experimental results show that our proposal is applicable and effective to incomplete mixed data.
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subjects Algorithms
Classification
Conditional entropy
Decision analysis
Dependency
Entropy
Incomplete decision table
Knowledge base
Mathematical models
Mixed feature selection
Neighborhood-tolerance relation
Rough set models
Tables (data)
title Mixed feature selection in incomplete decision table
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