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Downsampling for Testing and Learning in Product Distributions

Abstract

We study the domain reduction problem of eliminating dependence on nn from the complexity of property testing and learning algorithms on domain [n]d[n]^d, and the related problem of establishing testing and learning results for product distributions over Rd\mathbb{R}^d. Our method, which we call downsampling, gives conceptually simple proofs for several results: 1. A 1-page proof of the recent o(d)o(d)-query monotonicity tester for the hypergrid (Black, Chakrabarty & Seshadhri, SODA 2020), and an improvement from O(d7)O(d^7) to O~(d4)\widetilde O(d^4) in the sample complexity of their distribution-free monotonicity tester for product distributions over Rd\mathbb{R}^d; 2. An exp(O~(kd))\exp(\widetilde O(kd))-time agnostic learning algorithm for functions of kk convex sets in product distributions; 3. A polynomial-time agnostic learning algorithm for functions of a constant number of halfspaces in product distributions; 4. A polynomial-time agnostic learning algorithm for constant-degree polynomial threshold functions in product distributions; 5. An exp(O~(kd))\exp(\widetilde O(k \sqrt d))-time agnostic learning algorithm for kk-alternating functions in product distributions.

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