{"title":"On Optimal Two-Sided Pricing of Congested Networks","authors":"Xin Wang, Richard T. B. Ma, Yinlong Xu","doi":"10.1145/3078505.3078588","DOIUrl":null,"url":null,"abstract":"Internet Access Providers (APs) have built massive network platforms by which end-users and Content Providers (CPs) can connect and transmit data to each other. Traditionally, APs adopt one-sided pricing schemes and obtain revenues mainly from end-users. With the fast development of data-intensive services, e.g., online video streaming and cloud-based applications, Internet traffic has been growing rapidly. To sustain the traffic growth and enhance user experiences, APs have to upgrade network infrastructures and expand capacities; however, they feel that the revenues from end-users are insufficient to recoup the corresponding costs. Consequently, some APs, e.g., Comcast and AT&T, have recently shifted towards two-sided pricing schemes, i.e., they start to impose termination fees on CPs' data traffic in addition to charging end-users. Although some previous work has studied the economics of two-sided pricing in network markets, network congestion and its impacts on the utilities of different parties were often overlooked. However, the explosive traffic growth has caused severe congestion in many regional and global networks, especially during peak hours, which degrades end-users' experiences and reduces their data demand. This will strongly affect the profits of APs and the utilities of end-users and CPs. For optimizing individual and social utilities, APs and regulators need to reflect the design of pricing strategies and regulatory policies accordingly. So far, little is known about 1) the optimal two-sided pricing structure in a congested network and its changes under varying network environments, e.g., capacities of APs and congestion sensitivities of users, and 2) potential regulations on two-sided pricing for protecting social welfare from monopolistic providers. To address these questions, one challenge is to accurately capture endogenous congestion in networks. Although the level of congestion is influenced by network throughput, the users' traffic demand and throughput are also influenced by network congestion. It is crucial to capture this endogenous congestion so as to faithfully characterize the impacts of two-sided pricing in congested networks. In this work, we propose a novel model of a two-sided congested network built by an AP. We model network congestion as a function of AP's capacity and network throughput, which is also a function of the congestion level. We use different forms of the functions to capture congestion metric based on different service models, e.g., M/M/1 queue or capacity sharing, and user traffic based on different data types, e.g., online video or text. We characterize users' population and traffic demand under pricing and congestion parameters and derive an endogenous system congestion under an equilibrium. Based on the equilibrium model, we explore the structures of two-sided pricing which optimize the AP's profit and social welfare. We analyze the sensitivities of the optimal pricing under varying model parameters, .e.g., the capacity of the AP and congestion sensitivity of users. By comparing the two types of optimal pricing, we derive regulatory implications from the perspective of social welfare. Besides, we also evaluate the incentives of the AP and regulators to adopt the two-sided pricing instead of the traditional one-sided pricing that only charges on the user side.","PeriodicalId":133673,"journal":{"name":"Proceedings of the 2017 ACM SIGMETRICS / International Conference on Measurement and Modeling of Computer Systems","volume":"1 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2017-04-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Proceedings of the 2017 ACM SIGMETRICS / International Conference on Measurement and Modeling of Computer Systems","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1145/3078505.3078588","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 3
Abstract
Internet Access Providers (APs) have built massive network platforms by which end-users and Content Providers (CPs) can connect and transmit data to each other. Traditionally, APs adopt one-sided pricing schemes and obtain revenues mainly from end-users. With the fast development of data-intensive services, e.g., online video streaming and cloud-based applications, Internet traffic has been growing rapidly. To sustain the traffic growth and enhance user experiences, APs have to upgrade network infrastructures and expand capacities; however, they feel that the revenues from end-users are insufficient to recoup the corresponding costs. Consequently, some APs, e.g., Comcast and AT&T, have recently shifted towards two-sided pricing schemes, i.e., they start to impose termination fees on CPs' data traffic in addition to charging end-users. Although some previous work has studied the economics of two-sided pricing in network markets, network congestion and its impacts on the utilities of different parties were often overlooked. However, the explosive traffic growth has caused severe congestion in many regional and global networks, especially during peak hours, which degrades end-users' experiences and reduces their data demand. This will strongly affect the profits of APs and the utilities of end-users and CPs. For optimizing individual and social utilities, APs and regulators need to reflect the design of pricing strategies and regulatory policies accordingly. So far, little is known about 1) the optimal two-sided pricing structure in a congested network and its changes under varying network environments, e.g., capacities of APs and congestion sensitivities of users, and 2) potential regulations on two-sided pricing for protecting social welfare from monopolistic providers. To address these questions, one challenge is to accurately capture endogenous congestion in networks. Although the level of congestion is influenced by network throughput, the users' traffic demand and throughput are also influenced by network congestion. It is crucial to capture this endogenous congestion so as to faithfully characterize the impacts of two-sided pricing in congested networks. In this work, we propose a novel model of a two-sided congested network built by an AP. We model network congestion as a function of AP's capacity and network throughput, which is also a function of the congestion level. We use different forms of the functions to capture congestion metric based on different service models, e.g., M/M/1 queue or capacity sharing, and user traffic based on different data types, e.g., online video or text. We characterize users' population and traffic demand under pricing and congestion parameters and derive an endogenous system congestion under an equilibrium. Based on the equilibrium model, we explore the structures of two-sided pricing which optimize the AP's profit and social welfare. We analyze the sensitivities of the optimal pricing under varying model parameters, .e.g., the capacity of the AP and congestion sensitivity of users. By comparing the two types of optimal pricing, we derive regulatory implications from the perspective of social welfare. Besides, we also evaluate the incentives of the AP and regulators to adopt the two-sided pricing instead of the traditional one-sided pricing that only charges on the user side.
ap (Internet Access Providers)建立了庞大的网络平台,终端用户和内容提供商(Content provider)可以通过这个平台相互连接和传输数据。传统上,ap采用单边定价方案,主要从终端用户那里获得收入。随着在线视频流和基于云的应用等数据密集型业务的快速发展,互联网流量迅速增长。为了保持流量的持续增长和提升用户体验,ap需要升级网络基础设施和扩容网络容量;但是,他们认为来自最终用户的收入不足以收回相应的成本。因此,一些ap,例如Comcast和AT&T,最近转向了双边定价方案,即,除了向最终用户收费外,他们开始对cp的数据流量征收终止费。虽然以前的一些工作研究了网络市场中双边定价的经济学,但网络拥塞及其对各方效用的影响往往被忽视。然而,爆炸性的流量增长导致许多区域和全球网络严重拥堵,特别是在高峰时段,这降低了最终用户的体验并降低了他们的数据需求。这将严重影响ap的利润以及最终用户和cp的效用。为了优化个人和社会效用,ap和监管机构需要相应地反映定价策略和监管政策的设计。到目前为止,关于1)拥塞网络中最优的双边定价结构及其在不同网络环境下的变化,如ap的容量和用户的拥塞敏感性,以及2)保护社会福利免受垄断提供商侵害的双边定价的潜在法规,我们知之甚少。为了解决这些问题,一个挑战是准确捕获网络中的内生拥塞。虽然拥塞程度受网络吞吐量的影响,但用户的流量需求和吞吐量也会受到网络拥塞的影响。捕捉这种内生拥堵是至关重要的,以便忠实地描述拥堵网络中双边定价的影响。在这项工作中,我们提出了一个由AP构建的双向拥塞网络的新模型。我们将网络拥塞建模为AP容量和网络吞吐量的函数,网络吞吐量也是拥塞水平的函数。我们使用不同形式的功能来捕获基于不同服务模型的拥塞度量,例如,M/M/1队列或容量共享,以及基于不同数据类型的用户流量,例如,在线视频或文本。我们描述了定价和拥堵参数下的用户数量和交通需求,并推导了均衡下的内生系统拥堵。在均衡模型的基础上,探讨了优化AP利润和社会福利的双边定价结构。本文分析了不同模型参数下最优定价的敏感性。、AP容量和用户拥塞敏感度。通过比较两种类型的最优定价,我们从社会福利的角度得出了监管含义。此外,我们还评估了AP和监管机构采用双边定价而不是传统的仅向用户方收费的单方面定价的动机。