Selecting informative features with fuzzy-rough sets and its application for complex systems monitoring
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摘要
One of the main obstacles facing current intelligent pattern recognition applications is that of dataset dimensionality. To enable these systems to be effective, a redundancy-removing step is usually carried out beforehand. Rough set theory (RST) has been used as such a dataset pre-processor with much success, however it is reliant upon a crisp dataset; important information may be lost as a result of quantisation of the underlying numerical features. This paper proposes a feature selection technique that employs a hybrid variant of rough sets, fuzzy-rough sets, to avoid this information loss. The current work retains dataset semantics, allowing for the creation of clear, readable fuzzy models. Experimental results, of applying the present work to complex systems monitoring, show that fuzzy-rough selection is more powerful than conventional entropy-, PCA- and random-based methods.
论文关键词:Feature selection,Feature dependency,Fuzzy-rough sets,Reduct search,Rule induction,Systems monitoring
论文评审过程:Received 30 January 2003, Accepted 2 October 2003, Available online 12 February 2004.
论文官网地址:https://doi.org/10.1016/j.patcog.2003.10.016