We study the question of identity testing for structured distributions. More precisely, given samples from a {\em structured} distribution over and an explicit distribution over , we wish to distinguish whether versus is at least -far from , in distance. In this work, we present a unified approach that yields new, simple testers, with sample complexity that is information-theoretically optimal, for broad classes of structured distributions, including -flat distributions, -modal distributions, log-concave distributions, monotone hazard rate (MHR) distributions, and mixtures thereof.
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