Hybrid wavelet-support vector classification of waveforms

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摘要

The support vector machine (SVM) represents a new and very promising technique for machine learning tasks involving classification, regression or novelty detection. Improvements of its generalization ability can be achieved by incorporating prior knowledge of the task at hand.We propose a new hybrid algorithm consisting of signal-adapted wavelet decompositions and hard margin SVMs for waveform classification. The adaptation of the wavelet decompositions is tailored for hard margin SV classifiers with radial basis functions as kernels. It allows the optimization of the representation of the data before training the SVM and does not suffer from computationally expensive validation techniques.We assess the performance of our algorithm against the background of current concerns in medical diagnostics, namely the classification of endocardial electrograms and the detection of otoacoustic emissions. Here the performance of hard margin SVMs can significantly be improved by our adapted preprocessing step.

论文关键词:90C90,65T60,90C20,90C59,90C30,Support vector machines,Radial basis functions,Reproducing kernel Hilbert spaces,Wavelets,Adapted filter banks,Frames,Waveform recognition

论文评审过程:Received 24 July 2001, Revised 13 April 2002, Available online 24 October 2002.

论文官网地址:https://doi.org/10.1016/S0377-0427(02)00557-5