

Author: Yokoo T. Knight B.W. Sirovich L.
Publisher: Academic Press
ISSN: 1053-8119
Source: NeuroImage, Vol.14, Iss.6, 2001-12, pp. : 1309-1326
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Abstract
We consider a problem of blind signal extraction from noisy multivariate data, in which each datum represents a system's response, observed under a particular experimental condition. Our prototype example is multipixel functional images of brain activity in response to a set of prescribed experimental stimuli. We present a novel multivariate analysis technique, which identifies the different activity patterns (signals) that are attributable to specific experimental conditions, without
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