DocumentCode
3483590
Title
Sparse coding and rough set theory-based hybrid approach to the classificatory decomposition of cortical evoked potentials
Author
Boratyn, Grzegorz M. ; Smolinski, Tomasz G. ; Milanova, Mariofanna ; Wrobe, Andrzej
Author_Institution
Dept. of Electr. & Comput. Eng., Louisville Univ., KY, USA
Volume
5
fYear
2002
fDate
18-22 Nov. 2002
Firstpage
2264
Abstract
This paper presents a novel approach to classification of decomposed cortical evoked potentials (EPs). The decomposition is based on learning of a sparse set of basis functions using an artificial neural network (ANN). The basis functions are generated according to a probabilistic model of the data. In contrast to the traditional signal decomposition techniques (i.e. principle component analysis or independent component analysis), this allows for an overcomplete representation of the data (i.e. number of basis functions that is greater than the dimensionality of the input signals). Obviously, this can be of a great advantage. However, there arises an issue of selecting the most significant components from the whole collection. This is especially important in classification problems based upon the decomposed representation of the data, where only those components that provide a substantial discernibility between EPs of different groups are relevant. To deal with this problem, we propose an approach based on the rough set theory´s (RS) feature selection mechanisms. We design a sparse coding- and RS-based hybrid system capable of signal decomposition and, based on a reduced component set, signal classification.
Keywords
bioelectric potentials; medical signal processing; neural nets; rough set theory; signal classification; artificial neural network; basis functions; classification problems; classificatory decomposition; cortical evoked potentials; decomposed cortical evoked potentials; feature selection mechanisms; probabilistic model; rough set theory; rough set theory-based hybrid approach; signal classification; signal decomposition techniques; sparse coding; Artificial neural networks; Data models; Enterprise resource planning; Independent component analysis; Pattern classification; Principal component analysis; Signal analysis; Signal resolution; Wavelet analysis; Wavelet packets;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Information Processing, 2002. ICONIP '02. Proceedings of the 9th International Conference on
Print_ISBN
981-04-7524-1
Type
conf
DOI
10.1109/ICONIP.2002.1201896
Filename
1201896
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