ProSC+: Profit-Driven Online Participant Selection in Compressive Mobile Crowdsensing

Yueyue Chen, Deke Guo, Ming Xu
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引用次数: 6

Abstract

A mobile crowdsensing (MCS) platform motivates to employ participants from the crowd to complete sensing tasks. A crucial problem is to maximize the profit of the platform, i.e., the charge of a sensing task minus the payments to participants that execute the task. Recently, the appearance of data reconstruction method makes it possible to improve the platform's profit with a limited amount of sensing results in Compressive MCS (CMCS). However, It is of great challenge to the maximal profit for the CMCS platform, since it is hard to predict the reconstruction quality due to the dynamic features and mobility of participants. In response to such challenges, we propose two profit-driven online participant selection mechanisms for the given task model and participant model. In ProSC, the sub-profit in each slot is maximized during the sensing period of a task, by combing a statistical-based quality prediction method and a repetitive cross-validation algorithm. In ProSC+, we jointly optimize the number of required participants and their spatial distribution to further improve the converging property. Finally, we conduct comprehensive evaluations, the results indicate the effectiveness and efficiency of our mechanisms.
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压缩移动众筹中利润驱动的在线参与者选择
移动人群感知(MCS)平台激励从人群中雇佣参与者来完成感知任务。一个关键的问题是使平台的利润最大化,即,感知任务的费用减去向执行任务的参与者支付的费用。近年来,数据重构方法的出现使得压缩MCS (CMCS)在有限的传感结果下提高平台的利润成为可能。然而,由于参与者的动态性和流动性,重建质量难以预测,这对CMCS平台的最大利润提出了很大的挑战。为了应对这些挑战,我们针对给定的任务模型和参与者模型提出了两种利润驱动的在线参与者选择机制。在ProSC中,通过结合基于统计的质量预测方法和重复交叉验证算法,在任务的感知期内使每个槽的子利润最大化。在ProSC+中,我们共同优化了所需参与者的数量及其空间分布,进一步提高了收敛性。最后,我们进行了全面的评估,结果表明我们的机制的有效性和效率。
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