空间众包中的高效交叉动态任务分配

Tianyue Ren, Xu Zhou, Kenli Li, Yunjun Gao, Ji Zhang, Kuan-Ching Li
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引用次数: 0

摘要

空间众包作为一种新型的智能感知模式,受到了广泛的关注。任务分配是空间众包中的一个关键问题。在实践中,任务在时间和空间上的分布是不均匀的。因此,交叉任务分配问题越来越受到业界和学术界的关注。虽然已经有关于这个问题的研究,但它只关注内部平台的总收入最大化。因此,也可以对其进行改进,为外部工作者和任务请求者以及内部平台带来多赢的局面。受此启发,我们首先通过引入员工的声誉分数,提出了一个新的交叉动态任务分配(CDTA)问题,并证明了它是np困难的。针对CDTA问题,在新的跨平台激励机制和混合批处理策略的基础上,提出了一种基于混合批处理的框架,有效地解决了任务空间分布和时间分布不均匀的问题。在此基础上,提出了一种基于km的算法和一种密度感知的贪心算法,分别获得了准确的每批任务分配结果和良好的性能。此外,CDTA问题被建模为一个潜在的博弈,被证明至少在理论上具有纯纳什均衡。最后但并非最不重要的是,一个博弈论的方法被开发,以最大化内部平台和外部工人的收入在同一时间。在真实数据集和合成数据集上进行了大量实验,以证明所提出算法的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Cross Dynamic Task Assignment in Spatial Crowdsourcing
As a novel intelligent sensing paradigm, spatial crowdsourcing has received extensive attention. Task assignment is a key issue in spatial crowdsourcing. In practice, tasks are unevenly distributed in time and space. Accordingly, the problem of cross task assignment attracts growing attention in both industry and academia. Although there has been a research on this problem, it focuses only on maximizing total revenues for inner platforms. Therefore, it can also be improved to bring a multi-win situation for outer workers and task requesters as well as the inner platform. Inspired by this, we first formulate a new cross dynamic task assignment (CDTA) problem by introducing the reputation scores of workers, and prove it to be NP-hard. For the CDTA problem, a hybrid batch-based framework is presented on the basis of a new cross-platform incentive mechanism and a hybrid batch processing strategy, which are efficient in solving the problem of uneven spatial and time distribution of tasks, respectively. After that, a KM-based algorithm and a density-aware greedy algorithm are proposed to gain an accurate assignment result of tasks in each batch and good performance, respectively. Furthermore, the CDTA problem is modeled as a potential game that is proven to have at least a pure Nash Equilibrium theoretically. Last but not least, a game-theoretic approach is developed to maximize the revenues of the inner platform and outer workers at the same time. Extensive experiments on both real and synthetic datasets are conducted to demonstrate the effectiveness and efficiency of the proposed algorithms.
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