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Proceedings Paper

Attentional classification
Author(s): Ravi Kothari; Thiagarajan Balachander
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Paper Abstract

Proposed in this paper is a network which uses basis functions based on products of the input space variables raised to a variable power. These basis functions are introduced in regions of confusion obtained through vector quantization of the input space based on patterns which are erroneously classified by a simple linear classifier. The overall effect is thus of directly generating relevant higher order combinations of the input data in regions of maximum confusion. We present the complete architecture of the network and derive a training algorithm. Results using two synthetic data sets are provided.

Paper Details

Date Published: 22 March 1999
PDF: 8 pages
Proc. SPIE 3722, Applications and Science of Computational Intelligence II, (22 March 1999); doi: 10.1117/12.342914
Show Author Affiliations
Ravi Kothari, Univ. of Cincinnati (United States)
Thiagarajan Balachander, Univ. of Cincinnati (United States)


Published in SPIE Proceedings Vol. 3722:
Applications and Science of Computational Intelligence II
Kevin L. Priddy; Paul E. Keller; David B. Fogel; James C. Bezdek, Editor(s)

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