Epileptic Seizure Data Classification Using RBAs and Linear SVM
Alpika Tripathi1*, Geetika Srivastava2, K.K. Singh3 and P.K. Maurya4

1Department of Computer Science and Engineering, ASET, Amity University, Lucknow - 226010, India.

2Department of Physics and Electronics, Dr. RML Avadh University, Faizabad - 224001, India.

3Department of E and CE, ASET, Amity University, Lucknow - 226010, India.

4Department of Neurology, RML Institute of Medical Sciences, Lucknow - 226010, India.

Corresponding Author E-mail: alpika2k@gmail.com

Abstract: The objective of this paper is to make a distinction between EEG data of normal and epileptic subjects. Methods: The dataset is taken from 20-30 years healthy male/female subjects from EEG lab of Dept. of Neurology, Dr. RML Institute of Medical Sciences, Lucknow (India). The feature extraction has been done using the Hilbert Huang Transform (HHT) method. The experimental EEG signals have been decomposed till 5th level of Intrinsic Mode Function (IMF) followed by calculation of high order statistical values of each IMF. Relief algorithm (RBAs) is used for feature selection and classification is performed using Linear Support Vector Machine (Linear SVM). This paper gives an independent approach of classifying Epileptic EEG data with reduced computational cost and high accuracy. Our classification result shows sensitivity, specificity, selectiv­ity and accuracy of 96.4%, 79.16%, 84.3% and 88.5% respectively. The proposed method has been analyzed to be very effective in accurate classification of epileptic EEG data with high sensitivity.

Keywords: Epilepsy; EEG; Hilbert Huang Transform (HHT); Relief-Based Feature Selection Algorithms (Rbas); Linear Support Vector Machine (SVM)

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