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arxiv: 1210.8338 · v3 · pith:7I73HD7Ynew · submitted 2012-10-31 · 💻 cs.DS · cs.CC· math.PR· math.ST· stat.TH

On the Power of Conditional Samples in Distribution Testing

classification 💻 cs.DS cs.CCmath.PRmath.STstat.TH
keywords oracletestingconditional-samplingdistributionsamplingconditionalordinarypower
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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 $\mu$ takes as input a subset $S \subset [n]$ of the domain, and outputs a random sample $i \in S$ drawn according to $\mu$, conditioned on $S$ (and independently of all prior samples). The conditional-sampling oracle is a natural generalization of the ordinary sampling oracle in which $S$ always equals $[n]$. 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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