authors: Amari, Shun-Ichi
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Cichocki, A. & Yang... (1)Nagaoka, H. (1)
Ressources for Amari, Shun-Ichi

Amari, S.-I. Natural Gradient Learning for Over- and Under-Complete Bases in ICA Neural Computation 1999 [pdf]
Independent component analysis or blind source separation is a new technique of extracting independent signals from mixtures. It is applicable even when the number of independent sources is unknown and is larger or smaller than the number of observed mixture signals. This article extends the natural gradient learning algorithm to be applicable to these overcomplete and undercomplete cases. Here, the observed signals are assumed to be whitened by preprocessing, so that we use the natural Riemannian gradient in Stiefel manifolds.
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All ressources related to Amari, Shun-Ichi
                                                    3 elements   
Amari, S.-I. , Nagaoka, H. Methods of Information Geometry 1993
Amari, S.-I. Natural Gradient Learning for Over- and Under-Complete Bases in ICA Neural Computation 1999
Amari, S.-I. , Cichocki, A., Yang, H.H. Recurrent Neural Networks for Blind Separation of Sources 1995 :37-42

                                                    last computed Thu Dec 16 21:02:22 GMT+01:00 2004