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http://dx.doi.org/10.14400/JDC.2014.12.8.321

Classification of Epilepsy Using Distance-Based Feature Selection  

Lee, Sang-Hong (Department of Computer Science & Engineering, Anyang University)
Publication Information
Journal of Digital Convergence / v.12, no.8, 2014 , pp. 321-327 More about this Journal
Abstract
Feature selection is the technique to improve the classification performance by using a minimal set by removing features that are not related with each other and characterized by redundancy. This study proposed new feature selection using the distance between the center of gravity of the bounded sum of weighted fuzzy membership functions (BSWFMs) provided by the neural network with weighted fuzzy membership functions (NEWFM) in order to improve the classification performance. The distance-based feature selection selects the minimum features by removing the worst features with the shortest distance between the center of gravity of BSWFMs from the 24 initial features one by one, and then 22 minimum features are selected with the highest performance result. The proposed methodology shows that sensitivity, specificity, and accuracy are 97.7%, 99.7%, and 98.7% with 22 minimum features, respectively.
Keywords
Feature Selection; Epilepsy; Fuzzy Neural Networks; Wavelet Transforms; Feature Extraction;
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Times Cited By KSCI : 1  (Citation Analysis)
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