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Heterogeneous-belief based incentive schemes for crowd sensing in mobile social networks

机译:移动社交网络中基于异质信念的人群感知激励方案

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摘要

Crowd sensing is a new paradigm which exploits pervasive mobile devices to provide complex sensing services in mobile social networks (MSNs). To achieve good service quality for crowd sensing applications, incentive mechanisms are indispensable to attract more participants to guarantee long-term extensive user participation. Most of existing research works apply only for instantaneous sensing data collections, where all participants' information are known as a priori. Thus, how to tackle long-term extensive user participation occurring in practical crowd sensing applications with the coverage constraint becomes peculiarly challenging. In this paper, we model the problem as a restless multi-armed bandit process rather than a regular auction, where users submit their sensing data to the platform (the campaign organizer) over time, and the platform chooses a subset of users to collect sensing data. Then, to maximize the social welfare satisfying the coverage constraint for the infinite horizonal continuous sensing, we design incentive schemes based on heterogeneous-belief values for joint social states and realtime throughput Analysis results indicate that our schemes outperform the best existing solution.
机译:人群感应是一种新的范例,它利用无处不在的移动设备在移动社交网络(MSN)中提供复杂的感应服务。为了在人群感知应用中获得良好的服务质量,必不可少的激励机制是吸引更多参与者,以保证长期广泛的用户参与。现有的大多数研究工作仅适用于瞬时感知数据收集,其中所有参与者的信息都被称为先验信息。因此,如何解决具有覆盖范围约束的实际人群感测应用中发生的长期广泛用户参与变得特别具有挑战性。在本文中,我们将问题建模为不安定的多武装土匪流程,而不是定期拍卖,即用户随着时间的推移将其感应数据提交到平台(活动组织者),并且平台选择一部分用户来收集感应数据。然后,为了最大化满足无限水平连续感测的覆盖约束的社会福利,我们设计了基于异构信念值的激励方案,用于联合社会状态和实时吞吐量。分析结果表明,我们的方案优于现有的最佳解决方案。

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