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Article Posted by btel - Last updated: 2004-07-06
Title
Article.2004.07.06.06
File RSCTC2002.pdf
Short Description
Evolutionary algorithms and rough sets-based hybrid approach to classificatory decomposition of cortical evoked potentials.
Description This paper presents a novel approach to decomposition and classification of rat's cortical evoked potentials (EPs). The decomposition is based on learning of a sparse set of basis functions using Evolutionary Algorithms (EAs). The basis functions are generated in a potentially overcomplete dictionary of the EP components according to a proba-bilistic model of the data. Compared to the traditional, statistical signal decomposition techniques, this allows for a number of basis functions greater than the dimensionality of the input signals, which can be of a great advantage. However, there arises an issue of selecting the most significant components from the possibly overcomplete collection. This is especially important in classification problems performed on the de-composed representation of the data, where only those components that provide a substantial discernibility between EPs of different groups are relevant. In this paper, we propose an approach based on the Rough Set theory's (RS) feature selection mechanisms to deal with this problem. We design an EA and RS-based hybrid system capable of signal decomposition and, based on a reduced component set, signal classification.
Bibliographic Information 3rd International Conference on Rough Sets and Current Trends in Computing (RSCTC2002), Penn State Great Valley, Malvern, PA, USA
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Original Release Date
2004/04/19 20:26:00 GMT+2
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