2022
DOI: 10.48550/arxiv.2202.06880
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Black-Box Generalization

Abstract: We provide the first generalization error analysis for black-box learning through derivativefree optimization. Under the assumption of a Lipschitz and smooth unknown loss, we consider the Zeroth-order Stochastic Search (ZoSS) algorithm, that updates a d-dimensional model by replacing stochastic gradient directions with stochastic differences of K + 1 perturbed loss evaluations per dataset (example) query. For both unbounded and bounded possibly nonconvex losses, we present the first generalization bounds for t… Show more

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