A Bandit Approach to Online Pricing for Heterogeneous Edge Resource Allocation

Jiaming Cheng, Duong Thuy Anh Nguyen, Lele Wang, D. Nguyen, V. Bhargava
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引用次数: 2

Abstract

Edge Computing (EC) offers a superior user experience by positioning cloud resources in close proximity to end users. The challenge of allocating edge resources efficiently while maximizing profit for the EC platform remains a sophisticated problem, especially with the added complexity of the online arrival of resource requests. To address this challenge, we propose to cast the problem as a multi-armed bandit problem and develop two novel online pricing mechanisms, the Kullback-Leibler Upper Confidence Bound (KL-UCB) algorithm and the Min-Max Optimal algorithm, for heterogeneous edge resource allocation. These mechanisms operate in real-time and do not require prior knowledge of demand distribution, which can be difficult to obtain in practice. The proposed posted pricing schemes allow users to select and pay for their preferred resources, with the platform dynamically adjusting resource prices based on observed historical data. Numerical results show the advantages of the proposed mechanisms compared to several benchmark schemes derived from traditional bandit algorithms, including the Epsilon-Greedy, basic UCB, and Thompson Sampling algorithms.
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异构边缘资源分配在线定价的强盗方法
边缘计算(EC)通过将云资源定位在接近最终用户的位置来提供卓越的用户体验。有效地分配边缘资源,同时最大化EC平台的利润,仍然是一个复杂的问题,特别是随着资源请求在线到达的复杂性增加。为了解决这一挑战,我们建议将该问题视为一个多臂强盗问题,并开发两种新的在线定价机制,即Kullback-Leibler上置信度界(KL-UCB)算法和Min-Max最优算法,用于异构边缘资源分配。这些机制是实时运行的,不需要事先了解需求分布,而这在实践中是很难获得的。建议发布的定价方案允许用户选择和支付他们喜欢的资源,平台根据观察到的历史数据动态调整资源价格。数值结果表明,与传统强盗算法(包括Epsilon-Greedy、基本UCB和Thompson Sampling算法)衍生的几种基准方案相比,所提出的机制具有优势。
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