Crowdsensing incentive mechanisms for mobile systems with finite precisions

Shiyu Ji, Tingting Chen
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引用次数: 5

Abstract

Mobile devices with sensing capabilities have enabled a new paradigm of mobile crowdsensing with a broad range of applications. A major challenge in achieving a stable crowdsensing system in a large scale is the incentive issue for each participant. Proper incentive mechanisms are necessary to keep the crowdsensing working. However, most existing incentive mechanisms for crowdsensing assume the system has infinite precisions in opposite of the fact that digital devices round the results to discrete floating numbers. In this paper, we show that finite precisions and rounding can make the existing crowdsensing incentive mechanisms invalid. To address this problem, we design an incentive mechanism for discrete crowdsensing that achieves Perfect Bayesian Equilibrium (PBE) and maximizes platform utility. Our mechanism is efficient since its computational complexity is linear to the number of users. We also consider the case that different participants have diverse precisions, and design another incentive mechanism to achieve mixed PBE and maximize platform utility in the statistical sense. Extensive simulations verify our mechanisms are efficient, individual-rational and system-optimal.
有限精度移动系统的众感激励机制
具有传感功能的移动设备已经实现了具有广泛应用范围的移动人群传感的新范式。实现大规模稳定的众感系统的一个主要挑战是每个参与者的激励问题。适当的激励机制是保持众感运作的必要条件。然而,大多数现有的众感激励机制都假设系统具有无限精度,而数字设备将结果四舍五入为离散的浮点数。在本文中,我们证明了有限精度和舍入会使现有的众感激励机制失效。为了解决这个问题,我们设计了一个离散众感的激励机制,以实现完美贝叶斯均衡(PBE)和最大化平台效用。我们的机制是高效的,因为它的计算复杂度与用户数量呈线性关系。我们还考虑了不同参与者具有不同精度的情况,设计了另一种激励机制,以实现混合PBE和统计意义上的平台效用最大化。大量的模拟验证了我们的机制是高效的、个人理性的和系统最优的。
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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