在线随机决策的一致损失算法及其在装箱问题上的应用

Siddhartha Banerjee, Daniel Freund
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引用次数: 16

摘要

我们考虑了一类一般的有限视界在线决策问题,其中控制器在每个时段都有一个随机到达,并且必须从一组允许的动作中选择一个动作,最终目标仅取决于集合类型-动作计数。这样的框架封装了许多常见优化问题的在线随机变体,包括装箱、广义分配和网络收益管理。在这种情况下,我们研究了一种自然模型预测控制算法,该算法在每个周期内基于更新的确定性等效优化问题贪婪地行动。我们引入了一个简单但一般的条件,在该条件下,与完全知道到达点的最优解相比,该算法获得均匀的加性损失(与视界无关)。我们的条件可以通过上述问题,以及涉及分段线性目标和离线索引策略(包括航空公司超售问题)的更一般的设置来满足。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uniform Loss Algorithms for Online Stochastic Decision-Making With Applications to Bin Packing
We consider a general class of finite-horizon online decision-making problems, where in each period a controller is presented a stochastic arrival and must choose an action from a set of permissible actions, and the final objective depends only on the aggregate type-action counts. Such a framework encapsulates many online stochastic variants of common optimization problems including bin packing, generalized assignment, and network revenue management. In such settings, we study a natural model-predictive control algorithm that in each period, acts greedily based on an updated certainty-equivalent optimization problem. We introduce a simple, yet general, condition under which this algorithm obtains uniform additive loss (independent of the horizon) compared to an optimal solution with full knowledge of arrivals. Our condition is fulfilled by the above-mentioned problems, as well as more general settings involving piece-wise linear objectives and offline index policies, including an airline overbooking problem.
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