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Pricing Communication Networks: Optimality and Incentives.

机译:通讯网络的定价:最优性和激励措施。

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摘要

Network pricing is a cross-disciplinary research area, which requires deep under- standing of both networking technology and microeconomics. The goal of network pricing is to achieve satisfied network performances by allocating the scarce resource to satisfy different users' qualities of services while keeping in mind the incentives of different network entities. Proper design of pricing schemes is indispensable to the operation and management of communication networks. In this thesis we divide network pricing into four categories: static optimization-oriented pricing, dynamic optimization-oriented pricing, static profit-driven pricing, and dynamic profit-driven pricing. The first one is well studied in the literature, and our focus will be on the latter three categories. For each category, we illustrate the key design challenges and insights through a concrete networking example.;First, we investigate the issue of static profit-driven pricing. We consider a revenue maximization problem for a monopolist service provider, and discuss how to set incentive-compatible prices to induce proper allocation of limited resources among different types of users. We capture the interaction between the service provider and users through a two-stage Stackelberg game with both complete and incomplete information. With complete information, we study three pricing schemes: complete price differentiation, partial price differentiation, and no price differentiation. We characterize the trade-offs between the performance and complexity of different schemes. With incomplete information, we show that it is still possible to realize price differentiation, and provide the sufficient and necessary condition under which an incentive compatible price differentiation scheme can achieve the same revenue as the best scheme with complete information.;Then we investigate the issue of dynamic profit-driven pricing. We consider a general resource allocation and profit maximization problem for a cognitive virtual mobile network operator. Dynamics of the cognitive radio network include dynamic user demands, unstable sensing spectrum resources, dynamic spectrum prices, and time-varying channel conditions. In addition, we also consider multiuser diversity and imperfect sensing technique so that the network model is more realistic. We develop a low-complexity on-line control policy that determines pricing and resource scheduling without knowing the statistics of dynamic network parameters. We show that the proposed algorithm with dynamic pricing can achieve arbitrarily close to the optimal profit with a proper trade-off with the queuing delay.;We later investigate the issue of dynamic optimization-oriented pricing. We consider a node-capacitated multicast network with time-varying topology. By utilizing network coding, we design a dynamic pricing scheme that can achieve arbitrarily close to maximum network utility in a distributed fashion, while maintaining network stability. Moreover, we show that this algorithm is incentivecompatible, i.e., no matter what role a node plays in the network, the algorithm guarantees that the node has a non-negative profit. This result has practical importance for constructions for node-capacitated networks with multiple individual users (e.g., P2P networks), since it provides the proper incentives for individual nodes to join, stay, and contribute as relays in the network even if they have no interested contents.;The results developed in this thesis highlight the importance of pricing in communication networks. Specifically, our results show that pricing can be used as an effective tool to achieve optimal network performances while providing proper incentives for all network entities. This not only helps us better understand network pricing, but also gives us insights on the design of network pricing schemes.
机译:网络定价是一个跨学科的研究领域,需要对网络技术和微观经济学都有深刻的了解。网络定价的目的是通过分配稀缺资源来满足不同用户的服务质量,同时牢记不同网络实体的激励,从而获得满意的网络性能。定价方案的正确设计对于通信网络的运营和管理必不可少。在本文中,我们将网络定价分为四类:面向静态优化的定价,面向动态优化的定价,静态获利驱动的定价和动态获利驱动的定价。第一个在文献中得到了很好的研究,我们的重点将放在后三个类别上。对于每个类别,我们通过一个具体的网络示例说明主要的设计挑战和见解。首先,我们研究静态利润驱动定价的问题。我们考虑了垄断服务提供商的收入最大化问题,并讨论了如何设置激励兼容的价格以在不同类型的用户之间合理分配有限的资源。我们通过包含完整和不完整信息的两阶段Stackelberg游戏捕获服务提供商和用户之间的交互。利用完整的信息,我们研究了三种定价方案:完全价格差异,部分价格差异和无价格差异。我们描述了不同方案的性能和复杂性之间的权衡。在信息不完整的情况下,我们表明仍然可以实现价格差异化,并提供激励和兼容的价格差异化方案可以在具有完整信息的情况下获得与最佳方案相同的收益的充要条件。动态的利润驱动定价。我们考虑了认知虚拟移动网络运营商的一般资源分配和利润最大化问题。认知无线电网络的动态性包括动态的用户需求,不稳定的感应频谱资源,动态的频谱价格和时变的信道状况。另外,我们还考虑了多用户分集和不完善的感知技术,从而使网络模型更加真实。我们开发了一种低复杂度的在线控制策略,该策略可以确定定价和资源调度,而无需了解动态网络参数的统计信息。我们证明了所提出的带有动态定价的算法可以在适当的折衷与排队时延之间任意接近最优利润。我们随后研究了面向动态优化的定价问题。我们考虑具有时变拓扑的受节点限制的组播网络。通过利用网络编码,我们设计了一种动态定价方案,该方案可以以分布式方式任意接近最大网络效用,同时保持网络稳定性。而且,我们证明了该算法是激励兼容的,即,不管节点在网络中扮演什么角色,该算法都保证该节点具有非负利润。该结果对于具有多个单个用户的节点承载网络的构建(例如P2P网络)具有实际意义,因为它为单个节点提供了适当的激励,即使它们不感兴趣也可以加入,停留并在网络中充当中继内容。本文的研究结果突出了通信网络中定价的重要性。具体而言,我们的结果表明,定价可以用作实现最佳网络性能的有效工具,同时为所有网络实体提供适当的激励措施。这不仅可以帮助我们更好地了解网络定价,还可以使我们对网络定价方案的设计有所了解。

著录项

  • 作者

    Li, Shuqin.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Engineering Electronics and Electrical.;Operations Research.;Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 186 p.
  • 总页数 186
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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