基于在线学习的移动人群感知中多专业意识的参与者选择

Hanshang Li, Ting Li, Fan Li, Song Yang, Yu Wang
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引用次数: 7

摘要

随着智能手机及其嵌入式传感技术的快速发展,移动人群传感(MCS)成为执行大规模传感任务的新兴传感范式。大规模移动人群传感系统的关键挑战之一是如何从庞大的用户池中有效地选择最小的合适参与者集来执行任务。然而,个体参与者的能力通常不为选择机制所知,这导致了参与者选择的最具挑战性的问题。虽然在线学习技术可以用来了解参与者的能力,但每个人的不同专业知识使得单一的能力度量是不够的。为了解决参与者的多专业知识问题,本文引入了一种新的自学习架构,该架构利用参与者的历史表现记录来学习参与者的不同能力(包括感知概率和时间延迟)。将参与者选择问题表述为组合多臂强盗问题,提出了一种既有性能保证又有有限遗憾的在线参与者选择算法。广泛的模拟与现实世界的移动数据集证明了所提出的解决方案的效率。
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Multi-expertise Aware Participant Selection in Mobile Crowd Sensing via Online Learning
With the rapid increasing of smart phones and their embedded sensing technologies, mobile crowd sensing (MCS) becomes an emerging sensing paradigm for performing large-scale sensing tasks. One of the key challenges of large-scale mobile crowd sensing systems is how to effectively select the minimum set of appropriate participants from the huge user pool to perform the tasks. However, the capabilities of individual participants are usually unknown by the selection mechanism, which leads to the most challenging issue of participant selection. While online learning techniques can be used to learn the participant's capability, the diverse expertise of each individual makes a single capability metric is not sufficient. To address the multi-expertise of participants, in this paper we introduce a new self-learning architecture which leverages the historical performing records of participants to learn the different capabilities (both sensing probability and time delay) of participants. Formulating the participant selection problem as a combinational multi-armed bandit problem, we present an online participant selection algorithm with both performance guarantee and bounded regret. Extensive simulations with a real-world mobile dataset demonstrate the efficiency of the proposed solution.
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