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Towards Testing Monotonicity of Distributions Over General Posets

Abstract

In this work, we consider the sample complexity required for testing the monotonicity of distributions over partial orders. A distribution pp over a poset is monotone if, for any pair of domain elements xx and yy such that xyx \preceq y, p(x)p(y)p(x) \leq p(y). To understand the sample complexity of this problem, we introduce a new property called bigness over a finite domain, where the distribution is TT-big if the minimum probability for any domain element is at least TT. We establish a lower bound of Ω(n/logn)\Omega(n/\log n) for testing bigness of distributions on domains of size nn. We then build on these lower bounds to give Ω(n/logn)\Omega(n/\log{n}) lower bounds for testing monotonicity over a matching poset of size nn and significantly improved lower bounds over the hypercube poset. We give sublinear sample complexity bounds for testing bigness and for testing monotonicity over the matching poset. We then give a number of tools for analyzing upper bounds on the sample complexity of the monotonicity testing problem.

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