Differential Privacy Preserving in Big Data Analytics for Connected Health

被引:0
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作者
Chi Lin
Zihao Song
Houbing Song
Yanhong Zhou
Yi Wang
Guowei Wu
机构
[1] Dalian University of Technology,School of Software
[2] Key Laboratory for Ubiquitous Network and Service Software of Liaoning Province,Department of Electrical and Computer Engineering
[3] West Virginia University,undefined
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关键词
Body area networks; Big data; Differential privacy; Dynamic noise thresholds;
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摘要
In Body Area Networks (BANs), big data collected by wearable sensors usually contain sensitive information, which is compulsory to be appropriately protected. Previous methods neglected privacy protection issue, leading to privacy exposure. In this paper, a differential privacy protection scheme for big data in body sensor network is developed. Compared with previous methods, this scheme will provide privacy protection with higher availability and reliability. We introduce the concept of dynamic noise thresholds, which makes our scheme more suitable to process big data. Experimental results demonstrate that, even when the attacker has full background knowledge, the proposed scheme can still provide enough interference to big sensitive data so as to preserve the privacy.
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