在线分配、排序和匹配的随机轮循方法

Will Ma
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引用次数: 0

摘要

随机舍入是一种技术,最初用于从数学编程松弛中近似求解困难的离线离散优化问题。此后,它还被用于近似解决顺序随机优化问题,克服了维数诅咒。详细说来,我们首先要写出一个可行的线性规划松弛,它规定了采取行动的概率。然后,四舍五入设计出近似保留所有这些概率的(随机)在线策略,挑战在于在线策略面临硬约束,而规定的概率只需在期望值上满足这些约束。此外,与针对离线问题的经典随机舍入不同,在线策略的行动会随着时间的推移依次展开,其间会出现不可控的随机实现,从而影响未来行动的可行性。本教程通过代表该领域基本问题的四个独立示例,介绍了如何使用随机舍入设计在线策略:在线争用解决、随机探测、随机背包和随机匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Randomized Rounding Approaches to Online Allocation, Sequencing, and Matching
Randomized rounding is a technique that was originally used to approximate hard offline discrete optimization problems from a mathematical programming relaxation. Since then it has also been used to approximately solve sequential stochastic optimization problems, overcoming the curse of dimensionality. To elaborate, one first writes a tractable linear programming relaxation that prescribes probabilities with which actions should be taken. Rounding then designs a (randomized) online policy that approximately preserves all of these probabilities, with the challenge being that the online policy faces hard constraints, whereas the prescribed probabilities only have to satisfy these constraints in expectation. Moreover, unlike classical randomized rounding for offline problems, the online policy's actions unfold sequentially over time, interspersed by uncontrollable stochastic realizations that affect the feasibility of future actions. This tutorial provides an introduction for using randomized rounding to design online policies, through four self-contained examples representing fundamental problems in the area: online contention resolution, stochastic probing, stochastic knapsack, and stochastic matching.
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