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An online reinforcement learning approach to quality-cost-aware task allocation for multi-attribute social sensing

机译:多属性社会传感质量成本感知任务分配的在线加固学习方法

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Social sensing has emerged as a new sensing paradigm where humans (or devices on their behalf) collectively report measurements about the physical world. This paper focuses on a quality-cost-aware task allocation problem in multi-attribute social sensing applications. The goal is to identify a task allocation strategy (i.e., decide when and where to collect sensing data) to achieve an optimized tradeoff between the data quality and the sensing cost. While recent progress has been made to tackle similar problems, three important challenges have not been well addressed: (i) "online task allocation": the task allocation schemes need to respond quickly to the potentially large dynamics of the measured variables in social sensing; (ii) "multi-attribute constrained optimization": minimizing the overall sensing error given the dependencies and constraints of multiple attributes of the measured variables is a non-trivial problem to solve; (iii) "nonuniform task allocation cost": the task allocation cost in social sensing often has a nonuniform distribution which adds additional complexity to the optimized task allocation problem. This paper develops a Quality-Cost-Aware Online Task Allocation (QCO-TA) scheme to address the above challenges using a principled online reinforcement learning framework. We evaluate the QCO-TA scheme through a real-world social sensing application and the results show that our scheme significantly outperforms the state-of-the-art baselines in terms of both sensing accuracy and cost. (C) 2019 Elsevier B.V. All rights reserved.
机译:社会传感已经成为一个新的传感范式,其中人(或代表他们的设备)集体报告了关于物理世界的测量。本文重点介绍了多属性社交传感应用中的质量成本感知的任务分配问题。目标是识别任务分配策略(即,决定何时以及在哪里收集传感数据),以在数据质量和传感成本之间实现优化的权衡。虽然最近的进展解决了类似的问题,但三个重要的挑战尚未得到很好的解决:(i)“在线任务分配”:任务分配方案需要快速响应来自社会传感中测量变量的潜在大的动态; (ii)“多属性约束优化”:给出测量变量的多个属性的依赖关系和约束的总体传感误差是要解决的非琐碎问题; (iii)“非均匀任务分配成本”:社会感应中的任务分配成本通常具有非均匀的分布,这增加了对优化任务分配问题的额外复杂性。本文介绍了质量成本意识的在线任务分配(QCo-TA)计划,以解决上述原则的在线强化学习框架的挑战。我们通过现实世界的社会传感应用评估QCo-TA方案,结果表明,我们的计划在感知准确性和成本方面显着优于最先进的基线。 (c)2019年Elsevier B.V.保留所有权利。

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