2022
DOI: 10.48550/arxiv.2205.15033
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Optimal first-order methods for convex functions with a quadratic upper bound

Abstract: We analyze worst-case convergence guarantees of first-order optimization methods over a function class extending that of smooth and convex functions. This class contains convex functions that admit a simple quadratic upper bound. Its study is motivated by its stability under minor perturbations. We provide a thorough analysis of first-order methods, including worst-case convergence guarantees for several methods, and demonstrate that some of them achieve the optimal worstcase guarantee over the class. We suppo… Show more

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