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Generalizing Complex Hypotheses on Product Distributions: Auctions, Prophet Inequalities, and Pandora's Problem

27 November 2019
Chenghao Guo
Zhiyi Huang
Zhihao Gavin Tang
Xinzhi Zhang
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Abstract

This paper explores a theory of generalization for learning problems on product distributions, complementing the existing learning theories in the sense that it does not rely on any complexity measures of the hypothesis classes. The main contributions are two general sample complexity bounds: (1) O~(nkϵ2)\tilde{O} \big( \frac{nk}{\epsilon^2} \big)O~(ϵ2nk​) samples are sufficient and necessary for learning an ϵ\epsilonϵ-optimal hypothesis in any problem on an nnn-dimensional product distribution, whose marginals have finite supports of sizes at most kkk; (2) O~(nϵ2)\tilde{O} \big( \frac{n}{\epsilon^2} \big)O~(ϵ2n​) samples are sufficient and necessary for any problem on nnn-dimensional product distributions if it satisfies a notion of strong monotonicity from the algorithmic game theory literature. As applications of these theories, we match the optimal sample complexity for single-parameter revenue maximization (Guo et al., STOC 2019), improve the state-of-the-art for multi-parameter revenue maximization (Gonczarowski and Weinberg, FOCS 2018) and prophet inequality (Correa et al., EC 2019), and provide the first and tight sample complexity bound for Pandora's problem.

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