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ISDA
2009
IEEE

Measures for Unsupervised Fuzzy-Rough Feature Selection

14 years 7 months ago
Measures for Unsupervised Fuzzy-Rough Feature Selection
For supervised learning, feature selection algorithms attempt to maximise a given function of predictive accuracy. This function usually considers the ability of feature vectors to reflect decision class labels. It is therefore intuitive to retain only those features that are related to or lead to these decision classes. However, in unsupervised learning, decision class labels are not provided, which poses questions such as; which features should be retained? and, why not use all of the information? The problem is that not all features are important. Some of the features may be redundant, and others may be irrelevant and noisy. In this paper, some new fuzzy-rough set-based approaches to unsupervised feature selection are proposed. These approaches require no thresholding or domain information, and result in a significant reduction in dimensionality whilst retaining the semantics of the data.
Neil MacParthalain, Richard Jensen
Added 24 May 2010
Updated 24 May 2010
Type Conference
Year 2009
Where ISDA
Authors Neil MacParthalain, Richard Jensen
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