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      On The Identifiability of Mixture Models from Grouped Samples

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          Abstract

          Finite mixture models are statistical models which appear in many problems in statistics and machine learning. In such models it is assumed that data are drawn from random probability measures, called mixture components, which are themselves drawn from a probability measure P over probability measures. When estimating mixture models, it is common to make assumptions on the mixture components, such as parametric assumptions. In this paper, we make no assumption on the mixture components, and instead assume that observations from the mixture model are grouped, such that observations in the same group are known to be drawn from the same component. We show that any mixture of m probability measures can be uniquely identified provided there are 2m-1 observations per group. Moreover we show that, for any m, there exists a mixture of m probability measures that cannot be uniquely identified when groups have 2m-2 observations. Our results hold for any sample space with more than one element.

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          Most cited references6

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          Foundations of Modern Probability

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            Three-way arrays: rank and uniqueness of trilinear decompositions, with application to arithmetic complexity and statistics

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              Symmetric Tensors and Symmetric Tensor Rank

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                Author and article information

                Journal
                1502.06644

                Machine learning,Artificial intelligence,Statistics theory
                Machine learning, Artificial intelligence, Statistics theory

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