Reinforcement learning for Order Acceptance on a shared resource

M. M. Hing, A. van Harten, P. Schuur
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引用次数: 2

Abstract

Order acceptance (OA) is one of the main functions in business control. Basically, OA involves for each order a reject/accept decision. Always accepting an order when capacity is available could disable the system to accept more convenient orders in the future with opportunity losses as a consequence. Another important aspect is the availability of information to the decision-maker. We use the stochastic modeling approach, Markov decision theory and learning methods from artificial intelligence to find decision policies, even under uncertain information. Reinforcement learning (RL) is a quite new approach in OA. It is capable of learning both the decision policy and incomplete information, simultaneously. It is shown here that RL works well compared with heuristics. Finding good heuristics in a complex situation is a delicate art. It is demonstrated that a RL trained agent can be used to support the detection of good heuristics.
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基于共享资源的订单接受强化学习
订单接收(OA)是业务控制的主要功能之一。基本上,OA涉及到每个订单的拒绝/接受决策。总是在产能可用时接受订单可能会使系统无法在未来接受更方便的订单,从而导致机会损失。另一个重要方面是决策者的信息可用性。我们使用随机建模方法,马尔可夫决策理论和人工智能的学习方法来寻找决策策略,即使在不确定的信息下。强化学习(RL)是OA领域的一种新方法。它能够同时学习决策策略和不完全信息。这里显示,与启发式相比,强化学习效果更好。在复杂的情况下找到好的启发是一门微妙的艺术。结果表明,经过强化学习训练的智能体可以用来支持良好启发式的检测。
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