Economics of mobile data trading market

Junlin Yu, M. H. Cheung, Jianwei Huang
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引用次数: 6

Abstract

To exploit users' heterogeneous data demands, several mobile network operators worldwide have launched the mobile data trading markets, where users can trade mobile data quota with each other. In this work, we aim to understand the users' optimal trading decisions and the operator's revenue maximizing strategy. We model the interactions between the mobile operator and the users as a two-stage Stackelberg game. In Stage I, the operator chooses the operation fee imposed on sellers to maximize its revenue. In Stage II, each user decides whether to be a seller or a buyer and optimizes the corresponding trading price and quantity. We derive the closed-form expression of the unique Nash equilibrium (NE) in Stage II in closed-form, and prove that the users' decisions can converge to the NE through distributed best response updates. We show that at the NE, different types of sellers and buyers should propose the same price such that the total demand matches the total supply. We further show that the Stage I operation fee optimization problem is convex, and derive the optimal operation fee in closed-form. Our analysis and numerical results show that the users who have less uncertainty of their data usages can benefit more from data trading. We also show that an operation fee that is too high hurts both the users' payoffs and the operator's revenue.
移动数据交易市场经济学
为了挖掘用户的异构数据需求,全球多家移动网络运营商推出了移动数据交易市场,用户之间可以进行移动数据配额的交易。在这项工作中,我们旨在了解用户的最优交易决策和运营商的收益最大化策略。我们将移动运营商和用户之间的交互建模为一个两阶段的Stackelberg博弈。在第一阶段,运营商选择向卖家收取的运营费用,以使其收益最大化。在第二阶段,每个用户决定是卖方还是买方,并优化相应的交易价格和数量。我们导出了第二阶段唯一纳什均衡(NE)的封闭表达式,并证明了用户的决策可以通过分布式最优响应更新收敛到NE。我们表明,在NE,不同类型的卖者和买者应该提出相同的价格,使总需求匹配总供给。进一步证明了第一阶段运营费用优化问题是凸的,并导出了最优运营费用的封闭形式。我们的分析和数值结果表明,数据使用不确定性较小的用户可以从数据交易中获益更多。我们还表明,过高的运营费用既会损害用户的回报,也会损害运营商的收入。
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