Anonymizing user location and profile information for privacy-aware mobile services

M. Mano, Y. Ishikawa
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引用次数: 30

Abstract

Due to the growing use of mobile devices, location-based services have become popular. A location service often requires the user's exact location to provide appropriate services and this brings the risk of threats to privacy. In this paper, we propose an anonymization method for users of location-based services in mobile environments. The anonymization approach is based on the well-known k-anonymity concept, but has additional features. We consider the situation that a mobile service (e.g., mobile advertisement) utilizes mobile users' profiles for its service. Since a profile contains privacy information such as the age and address of the user, the use of profile information brings another kind of privacy threat. The anonymization method proposed in this paper considers not only location information but also privacy-related attributes in the user's profile. The location anonymizer, a trusted third-party placed between users and mobile application services, anonymizes the location and profile attributes based on the request. We define a similarity measure between mobile users for anonymization purposes. The similarity is used for related users in terms of their locations and profile attributes. We present the concept behind our method and the anonymization algorithm, and then show some experimental results.
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匿名用户位置和个人资料信息的隐私意识的移动服务
由于移动设备的使用越来越多,基于位置的服务变得流行起来。位置服务通常需要用户的确切位置才能提供适当的服务,这带来了威胁隐私的风险。在本文中,我们为移动环境中基于位置的服务的用户提出了一种匿名化方法。匿名化方法基于众所周知的k-匿名概念,但具有其他特性。我们考虑的情况是,移动服务(例如,移动广告)利用移动用户的配置文件为其服务。由于个人资料中包含用户的年龄和地址等隐私信息,因此个人资料信息的使用带来了另一种隐私威胁。本文提出的匿名化方法不仅考虑了位置信息,还考虑了用户个人资料中与隐私相关的属性。位置匿名器是放置在用户和移动应用服务之间的可信第三方,它会根据请求对位置和配置文件属性进行匿名化。我们为匿名目的定义了移动用户之间的相似性度量。相似度用于相关用户的位置和概要属性。我们介绍了我们的方法和匿名化算法背后的概念,然后展示了一些实验结果。
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