Tight Lower Bound on Equivalence Testing in Conditional Sampling Model
Diptarka Chakraborty, Sourav Chakraborty, Gunjan Kumar

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Abstract
We study the equivalence testing problem where the goal is to determine if the given two unknown distributions on are equal or -far in the total variation distance in the conditional sampling model (CFGM, SICOMP16; CRS, SICOMP15) wherein a tester can get a sample from the distribution conditioned on any subset. Equivalence testing is a central problem in distribution testing, and there has been a plethora of work on this topic in various sampling models. Despite significant efforts over the years, there remains a gap in the current best-known upper bound of [FJOPS, COLT 2015] and lower bound of [ACK, RANDOM 2015, Theory of Computing 2018]. Closing this gap has been repeatedly posed as an open problem (listed as problems 66 and 87 at sublinear.info). In this paper, we completely resolve the query complexity of this…
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Taxonomy
TopicsMachine Learning and Algorithms · Software Testing and Debugging Techniques · Adversarial Robustness in Machine Learning
