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On the Power of Conditional Samples in Distribution Testing

31 October 2012
Sourav Chakraborty
E. Fischer
Yonatan Goldhirsh
A. Matsliah
ArXiv (abs)PDFHTML
Abstract

In this paper we define and examine the power of the {\em conditional-sampling} oracle in the context of distribution-property testing. The conditional-sampling oracle for a discrete distribution μ\muμ takes as input a subset S⊂[n]S \subset [n]S⊂[n] of the domain, and outputs a random sample i∈Si \in Si∈S drawn according to μ\muμ, conditioned on SSS (and independently of all prior samples). The conditional-sampling oracle is a natural generalization of the ordinary sampling oracle in which SSS always equals [n][n][n]. We show that with the conditional-sampling oracle, testing uniformity, testing identity to a known distribution, and testing any label-invariant property of distributions is easier than with the ordinary sampling oracle. On the other hand, we also show that for some distribution properties the sample-complexity remains near-maximal even with conditional sampling.

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