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A Privacy-Preserving Task Recommendation Framework for Mobile Crowdsourcing

机译:保留的移动众包保留任务建议框架

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Mobile crowdsourcing enables mobile workers to complete a broad range of crowdsourcing tasks anywhere at any time. However, recommending suitable crowdsourcing tasks to mobile workers requires sensitive information such as location and activity, which raises serious privacy concerns. In this paper, we formulate the task recommendation process as an optimization problem which balances privacy, utility, and efficiency. We show that this optimization problem is NP-hard, and present a greedy solution which approximates the optimal solution within a factor of 1 - 1/e. We also design an efficient aggregation protocol to compute statistics of mobile workers required in the optimization problem while providing strong privacy guarantee. Both numerical evaluations and performance analysis are carried out to show the effectiveness and efficiency of the proposed framework. To the best of our knowledge, our work is the first to consider privacy issues in task recommendation for mobile crowdsourcing.
机译:移动众群使移动工人能够随时随地完成广泛的众包任务。但是,将合适的众群任务推荐给移动工人需要敏感的信息,如位置和活动,这提高了严重的隐私问题。在本文中,我们将任务推荐过程作为优化问题,平衡隐私,实用性和效率。我们表明,这种优化问题是NP - 硬,并且呈现了一种贪婪的解决方案,其近似于1-1 / e的最佳解决方案。我们还设计了一个有效的聚合协议,以计算优化问题所需的移动工作人员的统计信息,同时提供强大的隐私保障。进行了数值评估和性能分析,以表明所提出的框架的有效性和效率。据我们所知,我们的作品是第一个考虑在移动众包任务建议中的隐私问题。

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