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Dynamic Pricing of Wireless Internet Based on Usage and Stochastically Changing Capacity

机译:基于使用情况和容量随机变化的无线互联网动态定价

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摘要

Problem definition: Inspired by new developments in dynamic spectrum access, we study the dynamic pricing of wireless Internet access when demand and capacity (bandwidth) are stochastic. Academic/practical relevance: The demand for wireless Internet access has increased enormously. However, the spectrum available to wireless service providers is limited. The industry has, thus, altered conventional license-based spectrum access policies through unlicensed spectrum operations. The additional spectrum obtained through these operations has stochastic capacity. Thus, the pricing of this service by the service provider has novel challenges. The problem considered in this paper is, therefore, of high practical relevance and new to the academic literature. Methodology: We study this pricing problem using a Markov decision process model in which customers are posted dynamic prices based on their bandwidth requirement and the available capacity. Results: We characterize the structure of the optimal pricing policy as a function of the system state and of the input parameters. Because it is impossible to solve this problem for practically large state spaces, we propose a heuristic dynamic pricing policy that performs very well, particularly when the ratio of capacity to demand rate is low. Managerial implications: We demonstrate the value of using a dynamic heuristic pricing policy compared with the myopic and optimal static policies. The previous literature has studied similar systems with fixed capacity and has characterized conditions under which myopic policies perform well. In contrast, our setting has dynamic (stochastic) capacity, and we find that identifying good state-dependent heuristic pricing policies is of greater importance. Our heuristic policy is computationally more tractable and easier to implement than the optimal dynamic and static pricing policies. It also provides a significant performance improvement relative to the myopic and optimal static policies when capacity is scarce, a condition that holds for the practical setting that motivated this research.
机译:问题定义:受动态频谱访问新发展的启发,我们研究了需求和容量(带宽)随机时的无线互联网访问的动态定价。学术/实践相关性:对无线Internet访问的需求已大大增加。但是,无线服务提供商可用的频谱有限。因此,该行业已经通过无执照频谱操作来更改了基于常规许可证的常规频谱访问策略。通过这些操作获得的附加频谱具有随机容量。因此,服务提供商对该服务的定价具有新的挑战。因此,本文所考虑的问题具有高度的现实意义,并且是学术文献中的新问题。方法:我们使用马尔可夫决策过程模型研究此定价问题,在该模型中,根据客户的带宽需求和可用容量为客户发布动态价格。结果:我们根据系统状态和输入参数来表征最优定价策略的结构。由于无法在实际上很大的状态空间中解决此问题,因此我们提出了一种性能非常好的启发式动态定价策略,尤其是在容量与需求率之比较低时。对管理的影响:与近视和最优静态策略相比,我们证明了使用动态启发式定价策略的价值。先前的文献研究了具有固定容量的类似系统,并描述了近视策略执行良好的条件。相比之下,我们的设置具有动态(随机)容量,并且我们发现确定良好的依赖于状态的启发式定价策略更为重要。与最佳的动态和静态定价策略相比,我们的启发式策略在计算上更易于处理且更易于实施。当容量不足时,相对于近视和最佳静态策略,它还提供了显着的性能改进,而这种条件对于激发本研究的实际环境是成立的。

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