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Instance-Dependent Bounds for Zeroth-order Lipschitz Optimization with Error Certificates

Neural Information Processing Systems (NeurIPS), 2021
Abstract

We study the problem of zeroth-order (black-box) optimization of a Lipschitz function ff defined on a compact subset X\mathcal X of Rd\mathbb R^d, with the additional constraint that algorithms must certify the accuracy of their recommendations. We characterize the optimal number of evaluations of any Lipschitz function ff to find and certify an approximate maximizer of ff at accuracy ε\varepsilon. Under a weak assumption on X\mathcal X, this optimal sample complexity is shown to be nearly proportional to the integral Xdx/(max(f)f(x)+ε)d\int_{\mathcal X} \mathrm{d}\boldsymbol x/( \max(f) - f(\boldsymbol x) + \varepsilon )^d. This result, which was only (and partially) known in dimension d=1d=1, solves an open problem dating back to 1991. In terms of techniques, our upper bound relies on a packing bound by Bouttier al. (2020) for the Piyavskii-Shubert algorithm that we link to the above integral. We also show that a certified version of the computationally tractable DOO algorithm matches these packing and integral bounds. Our instance-dependent lower bound differs from traditional worst-case lower bounds in the Lipschitz setting and relies on a local worst-case analysis that could likely prove useful for other learning tasks.

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