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Learning rates for Gaussian mixtures under group invariance

Abstract

We study the pointwise maximum likelihood estimation rates for a class of Gaussian mixtures that are invariant under the action of some isometry group. This model is also known as multi-reference alignment, where random isometries of a given vector are observed, up to Gaussian noise. We completely characterize the speed of the maximum likelihood estimator, by giving a comprehensive description of the likelihood geometry of the model. We show that the unknown parameter can always be decomposed into two components, one of which can be estimated at the fast rate n1/2n^{-1/2}, the other one being estimated at the slower rate n1/4n^{-1/4}. We provide an algebraic description and a geometric interpretation of these facts.

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