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Sharp Local Minimax Rates for Goodness-of-Fit Testing in multivariate Binomial and Poisson families and in multinomials

26 December 2020
J. Chhor
Alexandra Carpentier
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Abstract

We consider the identity testing problem - or goodness-of-fit testing problem - in multivariate binomial families, multivariate Poisson families and multinomial distributions. Given a known distribution ppp and nnn iid samples drawn from an unknown distribution qqq, we investigate how large ρ>0\rho>0ρ>0 should be to distinguish, with high probability, the case p=qp=qp=q from the case d(p,q)≥ρd(p,q) \geq \rho d(p,q)≥ρ, where ddd denotes a specific distance over probability distributions. We answer this question in the case of a family of different distances: d(p,q)=∥p−q∥td(p,q) = \|p-q\|_td(p,q)=∥p−q∥t​ for t∈[1,2]t \in [1,2]t∈[1,2] where ∥⋅∥t\|\cdot\|_t∥⋅∥t​ is the entrywise ℓt\ell_tℓt​ norm. Besides being locally minimax-optimal - i.e. characterizing the detection threshold in dependence of the known matrix ppp - our tests have simple expressions and are easily implementable.

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