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On a convergence property of a geometrical algorithm for statistical manifolds

2019-09-27Unverified0· sign in to hype

Shotaro Akaho, Hideitsu Hino, Noboru Murata

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Abstract

In this paper, we examine a geometrical projection algorithm for statistical inference. The algorithm is based on Pythagorean relation and it is derivative-free as well as representation-free that is useful in nonparametric cases. We derive a bound of learning rate to guarantee local convergence. In special cases of m-mixture and e-mixture estimation problems, we calculate specific forms of the bound that can be used easily in practice.

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