A Generic Approach for Identification of Event Related Brain Potentials via a Competitive Neural Network Structure
Lange, Daniel H., Siegelmann, Hava T., Pratt, Hillel, Inbar, Gideon F.
–Neural Information Processing Systems
We present a novel generic approach to the problem of Event Related Potential identification and classification, based on a competitive Neural Netarchitecture. 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 oddball type paradigm; for the first time, withinsession variablesignal patterns are automatically identified, dismissing the strong and limiting requirement of a-priori stimulus-related selective grouping of the recorded data.
Neural Information Processing Systems
Dec-31-1998