Paper
25 May 2005 Feature selection based on neuro-fuzzy networks
Author Affiliations +
Abstract
Feature selection algorithm based on artificial neural networks can be taken as a special case of architecture pruning algorithm: compute the sensitivity of network outputs against pruned features. However, these methods usually require preprocessing of data normalization, which will possibly change original data's characters that are important to classification. Neuro-fuzzy (NF) network is a fuzzy inference system (FIS) with self-study ability. We combine it with architecture pruning algorithm based on membership space and propose a new feature selection algorithm. Finally, experiments using both natural and integrated data are carried out and compared with other methods. The results approve the validity of the algorithm.
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Nong Sang, Yantao Xie, and Tianxu Zhang "Feature selection based on neuro-fuzzy networks", Proc. SPIE 5809, Signal Processing, Sensor Fusion, and Target Recognition XIV, (25 May 2005); https://doi.org/10.1117/12.606149
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KEYWORDS
Feature selection

Fuzzy logic

Network architectures

Detection and tracking algorithms

IRIS Consortium

Evolutionary algorithms

Pattern recognition

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