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Truthful Mechanism Design for Multiregion Mobile Crowdsensing

机译:多限移动众脉的真实机制设计

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In the age of the development of artificial intelligence, we face the challenge on how to obtain high-quality data set for learning systems effectively and efficiently. Crowdsensing is a new powerful tool which will divide tasks between the data contributors to achieve an outcome cumulatively. However, it arouses several new challenges, such as incentivization. Incentive mechanisms are significant to the crowdsensing applications, since a good incentive mechanism will attract more workers to participate. However, existing mechanisms failed to consider situations where the crowdsourcer has to hire capacitated workers or workers from multiregions. We design two objectives for the proposed multiregion scenario, namely, weighted mean and maximin. The proposed mechanisms maximize the utility of services provided by a selected data contributor under both constraints approximately. Also, extensive simulations are conducted to verify the effectiveness of our proposed methods.
机译:在人工智能的发展时代,我们面临着如何获得有效且有效地获得学习系统的高质量数据集的挑战。众群是一种新的强大工具,将在数据贡献者之间划分任务以累积实现结果。然而,它引起了几种新挑战,例如激励。激励机制对众群申请具有重要意义,因为良好的激励机制将吸引更多工人参加。但是,现有机制未能考虑众群人必须雇用多个中容工人或工人的情况。我们为所提出的多部图场景设计了两个目标,即加权平均值和最大值。拟议的机制最大限度地提高了所选数据贡献者在两个约束下提供的服务的效用。此外,进行了广泛的模拟,以验证我们提出的方法的有效性。

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