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Optimal Task Partition with Delay Requirement in Mobile Crowdsourcing

机译:移动众包延迟要求的最佳任务分区

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Mobile crowdsourcing takes advantage of mobile devices such as smart phones and tablets to process data for a lot of applications (e.g., geotagging for mobile touring guiding monitoring and spectrum sensing). In this paper, we propose a mobile crowdsourcing paradigm to make a task requester exploit encountered mobile workers for high-quality results. Since a task may be too complex for a single worker, it is necessary for a task requester to divide a complex task into several parts so that a mobile worker can finish a part of the task easily. We describe the task crowdsourcing process and propose the worker arrival model and task model. Furthermore, the probability that all parts of the complicated task are executed by mobile workers is introduced to evaluate the result of task crowdsourcing. Based on these models, considering computing capacity and rewards for mobile workers, we formulate a task partition problem to maximize the introduced probability which is used to evaluate the result of task crowdsourcing. Then, using a Markov chain, a task partition policy is designed for the task requester to realize high-quality mobile crowdsourcing. With this task partition policy, the task requester is able to divide the complicated task into precise number of parts based on mobile workers’ arrival, and the probability that the total parts are executed by mobile workers is maximized. Also, the invalid number of task assignment attempts is analyzed accurately, which is helpful to evaluate the resource consumption of requesters due to probing potential workers. Simulations show that our task partition policy improves the results of task crowdsourcing.
机译:移动众包利用智能手机和平板电脑等移动设备来处理大量应用的数据(例如,用于移动旅游指导监测和频谱感测的地理标记)。在本文中,我们提出了一个移动众包的范例,使任务请求者利用遇到移动工作人员以获得高质量的结果。由于任务对于单个工人来说太复杂,因此任务请求者必须将复杂任务划分为几个部分,以便移动工作人员可以轻松完成任务的一部分。我们描述了任务众包流程,并提出了工人抵达模型和任务模型。此外,概述了复杂任务的所有部分的概率被引入移动工人来评估任务众包的结果。基于这些模型,考虑到移动工作人员的计算能力和奖励,我们制定了任务分区问题,以最大化引入的概率,用于评估任务众包的结果。然后,使用Markov链,为任务请求者设计了任务分区策略,以实现高质量的移动众群。使用此任务分区策略,任务请求者能够将复杂的任务划分为基于移动工人到达的精确数量,以及移动工作人员执行总部分的概率最大化。此外,准确分析了任务分配尝试的无效数量,这有助于评估请求者的资源消耗,因为探测潜在的工人。模拟表明,我们的任务分区策略提高了任务众包的结果。

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