Crowdsensing is an emerging paradigm of ubiquitous sensing, through which a crowd of workers are recruited to perform sensing tasks collaboratively. Although it has stimulated many applications, an open fundamental problem is how to select among a massive number of workers to perform a given sensing task under a limited budget. Nevertheless, due to the proliferation of smart devices equipped with various sensors, it is very difficult to profile the workers in terms of sensing ability. Although the uncertainties of the workers can be addressed by standard Combinatorial Multi-Armed Bandit (CMAB) framework through a trade-off between exploration and exploitation, we do not have sufficient allowance to directly explore and exploit the workers under the limited budget. Furthermore, since the sensor devices usually have quite limited resources, the workers may have bounded capabilities to perform the sensing task for only few times, which further restricts our opportunities to learn the uncertainty. To address the above issues, we propose a Context-Aware Worker Selection (CAWS) algorithm in this paper. By leveraging the correlation between the context information of the workers and their sensing abilities, CAWS aims at maximizing the expected total sensing revenue efficiently with both budget constraint and capacity constraints respected, even when the number of the uncertain workers are massive. The efficacy of CAWS can be verified by rigorous theoretical analysis and extensive experiments.
翻译:虽然它刺激了许多应用,但一个公开的根本问题是,如何在有限的预算下在众多工人中选择执行某种遥感任务。然而,由于配备各种传感器的智能装置的泛滥,很难从遥感能力的角度来描述工人的特征。虽然工人的不确定性可以通过勘探和开发之间的权衡来应对,但我们没有足够的津贴来直接探索和利用有限预算下的工人。此外,由于传感器装置通常资源有限,工人履行遥感任务的能力可能有限,因此只能有限地有限,这进一步限制了我们了解不确定性的机会。为了解决上述问题,我们提议在本文中采用背景软件工人选择(CAWS)标准算法。通过利用工人的背景信息与其感知能力之间的相互关系,CAWS的目标是尽可能提高预期的全部遥感收入的效能,同时要严格地进行预算限制和严格地分析。