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Social Welfare Maximization in Participatory Smartphone Sensing

机译:参与式智能手机感知中的社会福利最大化

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Participatory smartphone sensing has lately become more and more popular as a new paradigm for performing large-scale sensing, in which each smartphone contributes its sensed data for a collaborative sensing application. Most existing studies assume that smartphone users are strictly strategic and completely rational, which can achieve only sub-optimal system performance. Few existing studies can maximize a system-wide objective which takes both the platform and smartphone users into account. This paper focuses on the crucial problem of maximizing the system-wide performance or social welfare for a participatory smartphone sensing system. There are two great challenges. First, the social welfare maximization can not be realized on the platform side because the cost of each user is private and unknown to the platform in reality. Second, the participatory sensing system is a large-scale real-time system due to the huge number of smartphone users who are geo-distributed in the whole world. We propose a novel price-based decomposition framework, in which the platform provides a unit price for the sensing time spent by each user and the users return the sensing time via maximizing the monetary reward. This pricing framework is an effective incentive mechanism as users are motivated to participate for monetary rewards from the platform. The original problem is equiv-alently converted into an optimal pricing problem, and a distributed solution via a step-size-free price-updating algorithm is proposed. More importantly, the distributed algorithm ensures that the cost privacy of each user is not compromised. Experimental results show that our novel distributed algorithm can achieve the maximum social welfare of the participatory smartphone system.
机译:参与式智能手机感测作为一种执行大规模感测的新范例,近来越来越流行,其中每个智能手机都将其感测数据贡献给协作感测应用程序。现有的大多数研究都假设智能手机用户具有严格的战略性和完全理性,这只能实现次优的系统性能。很少有现有研究能够最大化将平台和智能手机用户都考虑在内的全系统目标。本文关注于一个参与式智能手机感应系统的最大化系统范围性能或社会福利的关键问题。有两个巨大的挑战。首先,由于每个用户的费用是私人的,实际上对于平台是未知的,因此无法在平台侧实现社会福利最大化。其次,由于在全球范围内分布着大量智能手机用户,因此参与式感应系统是一个大规模的实时系统。我们提出了一种新颖的基于价格的分解框架,其中该平台为每个用户花费的感测时间提供了单价,并且用户通过最大化货币奖励来返回感测时间。该定价框架是一种有效的激励机制,因为用户被激励参与该平台的金钱奖励。将原来的问题等效地转换为最优定价问题,并提出了一种通过无步长的价格更新算法的分布式解决方案。更重要的是,分布式算法可确保不损害每个用户的成本私密性。实验结果表明,我们新颖的分布式算法可以实现参与式智能手机系统的最大社会福利。

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