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Learning mixtures of structured distributions over discrete domains

2 October 2012
Siu On Chan
Ilias Diakonikolas
Rocco A. Servedio
Xiaorui Sun
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Abstract

Let C\mathfrak{C}C be a class of probability distributions over the discrete domain [n]={1,...,n}.[n] = \{1,...,n\}.[n]={1,...,n}. We show that if C\mathfrak{C}C satisfies a rather general condition -- essentially, that each distribution in C\mathfrak{C}C can be well-approximated by a variable-width histogram with few bins -- then there is a highly efficient (both in terms of running time and sample complexity) algorithm that can learn any mixture of kkk unknown distributions from C.\mathfrak{C}.C. We analyze several natural types of distributions over [n][n][n], including log-concave, monotone hazard rate and unimodal distributions, and show that they have the required structural property of being well-approximated by a histogram with few bins. Applying our general algorithm, we obtain near-optimally efficient algorithms for all these mixture learning problems.

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