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Privacy preserving big histogram aggregation for spatial crowdsensing

机译:保留隐私的大直方图聚合以进行空间人群感知

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The popularity of mobile devices has far expanded the application scenarios of spatial crowdsensing, due to its ability to provide fine-grained multi dimensional sensor readings associated with location information. Privacy is one of the fundamental issues in crowdsensing, as these location-based sensor readings may reveal identities or activities of participants. In this paper, we adopts the state-of-art location privacy definition geo-indistinguishability, provide an efficient and effective privacy preserving histogram aggregation mechanism BFMM (Bit Flipping Matrix Mechanism) for fine-grained multi dimensional location-based data. Theoretical analyses and experimental results demonstrate the efficiency and effectiveness of our approach for fine-grained multidimensional location-based data. Specifically, the aggregation accuracy of our approach averagely outperforms existing methods by a factor of number of buckets in the histogram.
机译:由于移动设备提供与位置信息相关的细粒度多维传感器读数的能力,移动设备的普及已大大扩展了空间人群感知的应用场景。隐私是人群感知中的基本问题之一,因为这些基于位置的传感器读数可能会揭示参与者的身份或活动。在本文中,我们采用了最新的位置隐私定义地理不可区分性,为细粒度的多维位置数据提供了一种高效有效的隐私保留直方图聚合机制BFMM(位翻转矩阵机制)。理论分析和实验结果证明了我们针对细粒度多维基于位置的数据的方法的有效性和有效性。具体而言,我们的方法的聚合准确性平均比直方图中的存储桶数高出现有方法。

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