计算机科学
任务(项目管理)
集合(抽象数据类型)
相互依存
质量(理念)
贪婪算法
任务分析
人工智能
机器学习
分布式计算
算法
经济
法学
程序设计语言
管理
哲学
认识论
政治学
作者
Jiangtao Wang,Yasha Wang,Daqing Zhang,Feng Wang,Haoyi Xiong,Chao Chen,Qin Lv,Zhaopeng Qiu
标识
DOI:10.1109/tmc.2018.2793908
摘要
Task allocation is a fundamental research issue in mobile crowd sensing. While earlier research focused mainly on single tasks, recent studies have started to investigate multi-task allocation, which considers the interdependency among multiple tasks. A common drawback shared by existing multi-task allocation approaches is that, although the overall utility of multiple tasks is optimized, the sensing quality of individual tasks may become poor as the number of tasks increases. To overcome this drawback, we re-define the multi-task allocation problem by introducing task-specific minimal sensing quality thresholds, with the objective of assigning an appropriate set of tasks to each worker such that the overall system utility is maximized. Our new problem also takes into account the maximum number of tasks allowed for each worker and the sensor availability of each mobile device. To solve this newly-defined problem, this paper proposes a novel multi-task allocation framework named MTasker. Different from previous approaches which start with an empty set and iteratively select task-worker pairs, MTasker adopts a descent greedy approach, where a quasi-optimal allocation plan is evolved by removing a set of task-worker pairs from the full set. Extensive evaluations based on real-world mobility traces show that MTasker outperforms the baseline methods under various settings, and our theoretical analysis proves that MTasker has a good approximation bound.
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