A Generic Approach for Identification of Event Related Brain Potentials via a Competitive Neural Network Structure

Part of Advances in Neural Information Processing Systems 10 (NIPS 1997)

Bibtex Metadata Paper

Authors

Daniel H. Lange, Hava T. Siegelmann, Hillel Pratt, Gideon F. Inbar

Abstract

We present a novel generic approach to the problem of Event Related Potential identification and classification, based on a competitive N eu(cid:173) ral Net architecture. The network weights converge to the embedded signal patterns, resulting in the formation of a matched filter bank. The network performance is analyzed via a simulation study, exploring identification robustness under low SNR conditions and compared to the expected performance from an information theoretic perspective. The classifier is applied to real event-related potential data recorded during a classic odd-ball type paradigm; for the first time, within(cid:173) session variable signal patterns are automatically identified, dismiss(cid:173) ing the strong and limiting requirement of a-priori stimulus-related selective grouping of the recorded data.

902

D. H. Lange, H. T. Siegelmann, H. Pratt and G. F. Inbar