Near Optimal and Dynamic Mechanisms Towards a Stable NFV Market in Multi-Tier Cloud Networks

Zichuan Xu, Hao-li Ren, W. Liang, Qiufen Xia, Wanlei Zhou, Guowei Wu, Pan Zhou
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引用次数: 5

Abstract

With the fast development of next-generation networking techniques, a Network Function Virtualization (NFV) market is emerging as a major market that allows network service providers to trade various network services among consumers. Therefore, efficient mechanisms that guarantee stable and efficient operations of the NFV market are urgently needed. One fundamental problem in the NFV market is how to maximize the social welfare of all players, so they have incentives to participate in activities of the market. In this paper, we first formulate the social welfare maximization problem, with an aim to maximize the total revenue of all players in the NFV market. For the social welfare maximization problem, we design an efficient incentive-compatible mechanism and analyze the existence of a Nash equilibrium of the mechanism. We also consider an online social welfare maximization problem without the knowledge of future request arrivals. We devise an online learning algorithm based on Multi-Armed Bandits (MAB) to allow both customers and network service providers to make decisions with uncertainty of customers’ strategy. We evaluate the performance of the proposed mechanisms by both simulations and test-bed implementations, and the results show that the proposed mechanisms obtain at most 23% higher social welfare than existing studies.
面向多层云网络稳定的NFV市场的近最优动态机制
随着下一代网络技术的快速发展,网络功能虚拟化(NFV)市场正在成为网络服务提供商在消费者之间进行各种网络服务交易的主要市场。因此,迫切需要有效的机制来保证NFV市场的稳定和高效运行。NFV市场的一个根本问题是如何使所有参与者的社会福利最大化,使他们有动力参与市场活动。本文首先提出社会福利最大化问题,以NFV市场中所有参与者的总收益最大化为目标。针对社会福利最大化问题,设计了一个有效的激励兼容机制,并分析了该机制的纳什均衡存在性。我们还考虑了一个不知道未来请求到达的在线社会福利最大化问题。我们设计了一种基于Multi-Armed Bandits (MAB)的在线学习算法,允许客户和网络服务提供商在客户策略不确定的情况下进行决策。我们通过模拟和测试平台实现来评估所提出机制的性能,结果表明,所提出的机制比现有研究最多可获得23%的社会福利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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