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技术说明:弱耦合随机动态规划松弛的强度

Technical Note—On the Strength of Relaxations of Weakly Coupled Stochastic Dynamic Programs

Operations Research · 2022
被引 9
人大 AFT50UTD24ABS 4*

中文导读

研究了弱耦合随机动态规划中两种近似方法(近似线性规划和拉格朗日松弛)的上界,发现两者在广泛条件下非常接近甚至相同,建议优先使用拉格朗日松弛。

Abstract

Many sequential decision problems have a weakly coupled structure in that a set of linking constraints couples an otherwise independent collection of subproblems. This structure arises in a wide variety of applications, such as network revenue management, online advertising, assortment planning, interactive marketing, optimization of power systems, and multilocation inventory management to name only a few. Such problems can be modeled as dynamic programs but are quite difficult to solve. Two widely studied approximation methods are approximate linear programs, which involve finding a best approximation of total value that is additive across the subsystems, and Lagrangian relaxations, which involve relaxing the linking constraints. It is well known that both of these approaches provide upper bounds to the optimal value, and the approximate linear programming approach is a better bound but also, more difficult to compute. In this paper, we provide a detailed theoretical analysis of these two approximations and show that, under fairly broad conditions, these two approximations lead to upper bounds that are very close and often identical. Our theory suggests that, between these two approximations, Lagrangian relaxations should usually be the preferred choice for researchers studying applications involving weakly coupled dynamic programs.

动态规划随机规划拉格朗日松弛近似线性规划弱耦合结构