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Unsupervised learning for signal versus noise (Corresp.) | IEEE Journals & Magazine | IEEE Xplore

Unsupervised learning for signal versus noise (Corresp.)


Abstract:

The Bayes solution to the unsupervised sequential learning problem induced by a mixture model for the two-class signal versus noise decision problem generates a computati...Show More

Abstract:

The Bayes solution to the unsupervised sequential learning problem induced by a mixture model for the two-class signal versus noise decision problem generates a computational and storage explosion. A quasi-Bayes approximate learning procedure is proposed that avoids the computational explosion while retaining the flavor of the Bayes solution. Convergence is established and efficiency is investigated.
Published in: IEEE Transactions on Information Theory ( Volume: 27, Issue: 4, July 1981)
Page(s): 498 - 500
Date of Publication: 31 July 1981

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