Downsampling for Testing and Learning in Product Distributions

We study the domain reduction problem of eliminating dependence on from the complexity of property testing and learning algorithms on domain , and the related problem of establishing testing and learning results for product distributions over . Our method, which we call downsampling, gives conceptually simple proofs for several results: 1. A 1-page proof of the recent -query monotonicity tester for the hypergrid (Black, Chakrabarty & Seshadhri, SODA 2020), and an improvement from to in the sample complexity of their distribution-free monotonicity tester for product distributions over ; 2. An -time agnostic learning algorithm for functions of 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 -time agnostic learning algorithm for -alternating functions in product distributions.
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