Prior knowledge and preferential structures in gradient descent learning algorithms
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Mahony, Robert
Williamson, Robert
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MIT Press
Abstract
A family of gradient descent algorithms for learning linear functions in an online setting is
considered. The family includes the classical LMS algorithm as well as new variants such as
the Exponentiated Gradient (EG) algorithm due to Kivinen and Warmuth. The algorithms
are based on prior distributions defined on the weight space. Techniques from differential
geometry are used to develop the algorithms as gradient descent iterations with respect to
the natural gradient in the Riemannian structure induced by the prior distribution. The
proposed framework subsumes the notion of "link-functions".
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Journal of Machine Learning Research 1.9 (2001): 311-355
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Journal of Machine Learning Research
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