基于隐私保护的众感智能流行病监测。

IF 5.6 3区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Hafiz Asif, Periklis A Papakonstantinou, Stephanie Shiau, Vivek Singh, Jaideep Vaidya
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引用次数: 3

摘要

智能地应对Covid-19这样的大流行需要复杂的模型和准确的实时数据,而这通常在一开始就缺乏,例如由于缺乏人群测试。在这种情况下,对空间标记的疾病相关症状进行群体感知,是获取疫情实时信息的另一种方式。现有的众测系统对预先确定的区域(如县)进行汇总和发布数据。然而,从这种聚合中获得的见解并不能提供关于较小区域的有用信息,例如,通常发生疫情的社区,而且聚合并发布方法容易受到隐私攻击。因此,我们提出了一种新颖的差分隐私方法,在不损害数据贡献者隐私的情况下,从用户(例如研究人员和政策制定者)指定的任何数量的区域的众感数据中获得准确的见解。我们的方法已经实施和部署,为纵向和空间数据分析的未来隐私保护智能系统的发展提供了信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intelligent Pandemic Surveillance via Privacy-Preserving Crowdsensing.

Intelligent Pandemic Surveillance via Privacy-Preserving Crowdsensing.

Intelligently responding to a pandemic like Covid-19 requires sophisticated models over accurate real-time data, which is typically lacking at the start, e.g., due to deficient population testing. In such times, crowdsensing of spatially tagged disease-related symptoms provides an alternative way of acquiring real-time insights about the pandemic. Existing crowdsensing systems aggregate and release data for pre-fixed regions, e.g., counties. However, the insights obtained from such aggregates do not provide useful information about smaller regions - e.g., neighborhoods where outbreaks typically occur - and the aggregate-and-release method is vulnerable to privacy attacks. Therefore, we propose a novel differentially private method to obtain accurate insights from crowdsensed data for any number of regions specified by the users (e.g., researchers and a policy makers) without compromising privacy of the data contributors. Our approach, which has been implemented and deployed, informs the development of the future privacy-preserving intelligent systems for longitudinal and spatial data analytics.

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来源期刊
IEEE Intelligent Systems
IEEE Intelligent Systems 工程技术-工程:电子与电气
CiteScore
13.80
自引率
3.10%
发文量
122
审稿时长
1 months
期刊介绍: IEEE Intelligent Systems serves users, managers, developers, researchers, and purchasers who are interested in intelligent systems and artificial intelligence, with particular emphasis on applications. Typically they are degreed professionals, with backgrounds in engineering, hard science, or business. The publication emphasizes current practice and experience, together with promising new ideas that are likely to be used in the near future. Sample topic areas for feature articles include knowledge-based systems, intelligent software agents, natural-language processing, technologies for knowledge management, machine learning, data mining, adaptive and intelligent robotics, knowledge-intensive processing on the Web, and social issues relevant to intelligent systems. Also encouraged are application features, covering practice at one or more companies or laboratories; full-length product stories (which require refereeing by at least three reviewers); tutorials; surveys; and case studies. Often issues are theme-based and collect articles around a contemporary topic under the auspices of a Guest Editor working with the EIC.
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