Hybrid Support Vector Machine for imbalanced data in multiclass arrhythmia classification Online publication date: Fri, 14-May-2010
by Aniruddha J. Joshi, Sharat Chandran, V.K. Jayaraman, B.D. Kulkarni
International Journal of Functional Informatics and Personalised Medicine (IJFIPM), Vol. 3, No. 1, 2010
Abstract: Automatically classifying ECG recordings for arrhythmia is difficult since even normal ECG signals exhibit irregularities, and learning algorithms suffer from class imbalance. We propose a hybrid SVM to combat class imbalance rampant in biomedical signals. Consequently, we significantly reduce the number patients falsely classified as normal. The Hybrid SVM is suitable for a variety of multiclass problems; here, we used the MIT-BIH Arrhythmia database, and the position and magnitude of local singularities as features. We enhance relevant singularity-driven Holder features proposed earlier; while the use of these features results in higher accuracy, using the Hybrid SVM shows even more gains.
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