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Approximate dynamic programming for stochastic resource allocation problems

机译:随机资源分配问题的近似动态规划

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摘要

A stochastic resource allocation model, based on the principles of Markov decision processes (MDPs), is proposed in this paper. In particular, a general-purpose framework is developed, which takes into account resource requests for both instant and future needs. The considered framework can handle two types of reservations (i.e., specified and unspecified time interval reservation requests), and implement an overbooking business strategy to further increase business revenues. The resulting dynamic pricing problems can be regarded as sequential decision-making problems under uncertainty, which is solved by means of stochastic dynamic programming (DP) based algorithms. In this regard, Bellman's backward principle of optimality is exploited in order to provide all the implementation mechanisms for the proposed reservation pricing algorithm. The curse of dimensionality, as the inevitable issue of the DP both for instant resource requests and future resource reservations, occurs. In particular, an approximate dynamic programming (ADP) technique based on linear function approximations is applied to solve such scalability issues. Several examples are provided to show the effectiveness of the proposed approach.
机译:本文提出了一种基于马尔可夫决策过程(MDP)的原理的随机资源分配模型。特别是,开发了通用框架,这考虑了瞬间和未来需求的资源请求。考虑的框架可以处理两种类型的预订(即指定和未指定的时间间隔预订请求),并实施超预订业务策略,以进一步提高业务收入。由此产生的动态定价问题可以被视为不确定性下的顺序决策问题,其通过基于随机动态编程(DP)的算法来解决。在这方面,贝尔曼的倒退原则是利用了所提出的预约定价算法的所有实施机制。作为即时资源请求和未来资源预留的DP的不可避免地问题,通常存在维度的诅咒。特别地,基于线性函数近似的近似动态编程(ADP)技术被应用于解决这些可扩展性问题。提供了几个例子以显示所提出的方法的有效性。

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