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误设定情境下的数据驱动组合优化

Data-Driven Compositional Optimization in Misspecified Regimes

Operations Research · 2024
被引 1
人大 AFT50UTD24ABS 4*

中文导读

研究了参数误设定下的组合随机优化问题,提出能处理多种风险、动态和非凸性的算法,并证明其收敛速度与正确设定时相同,达到最优样本复杂度。

Abstract

With a manifold growth in the scale and intricacy of systems, the challenges of parametric misspecification become pronounced. These concerns are further exacerbated in compositional settings, which emerge in problems complicated by modeling risk and robustness. In “Data-Driven Compositional Optimization in Misspecified Regimes,” the authors consider the resolution of compositional stochastic optimization problems, plagued by parametric misspecification. In considering settings where such misspecification may be resolved via a parallel learning process, the authors develop schemes that can contend with diverse forms of risk, dynamics, and nonconvexity. They provide asymptotic and rate guarantees for unaccelerated and accelerated schemes for convex, strongly convex, and nonconvex problems in a two-level regime with extensions to the multilevel setting. Surprisingly, the nonasymptotic rate guarantees show no degradation from the rate statements obtained in a correctly specified regime and the schemes achieve optimal (or near-optimal) sample complexities for general T-level strongly convex and nonconvex compositional problems.

组合优化参数误设定随机优化机器学习计量经济学