2023
DOI: 10.54097/fcis.v3i3.8568
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An Adaptive Variance Reduction Zeroth-Order Algorithm for Finite-Sum Optimization

Yajie Zhu,
Mingchuan Zhang

Abstract: The unconstrained finite-sum optimization problem is a common type of problem in the field of optimization, and there is currently limited research on zeroth-order optimization algorithms. To solve unconstrained finite-sum optimization problems for non-convex function, we propose a zeroth-order optimization algorithm with adaptive variance reduction, called ZO-AdaSPIDER for short. Then, we analyze the convergence performance of the algorithm. The theoretical results show that ZO-AdaSPIDER algorithm can converg… Show more

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