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arxiv: cond-mat/9809135 · v2 · submitted 1998-09-09 · ❄️ cond-mat · adap-org· nlin.AO

Statistical Features in Learning

classification ❄️ cond-mat adap-orgnlin.AO
keywords featureslearningalgorithmsconcreteconsideredconvergencedelayedelementary
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We study some features of learning models based on "delayed" and undifferentiated reinforcement and realized by simple algorithms which may be considered of a very elementary nature. We show that a modification of the Hebb-rule works well for this problem in a neural network realization and study numerically its convergence properties. An illustration for a more "concrete" situation is provided.

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