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A robust data obfuscation approach for privacy preserving collaborative filtering.

机译:强大的数据混淆方法,用于保护隐私的协作过滤。

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Privacy is defined as the freedom from unauthorized intrusion. The availability of personal information through online databases, such as government records, medical records, and voters lists, pose a threat to personal privacy. The concern over individual privacy has led to the development of legal codes for safeguarding privacy in several countries [56]. However, the ignorance of individuals as well as loopholes in the systems, have led to information breaches even in the presence of such rules and regulations. Protection against data privacy requires modification of the data itself. The term data obfuscation is used to refer to the class of algorithms that modify the values of the data items without distorting the usefulness of the data. The main goal of this thesis is the development of a data obfuscation technique that provides robust privacy protection with minimal loss in usability of the data. Although medical and financial services are two of the major areas where information privacy is a concern, privacy breaches are not restricted to these domains.; One of the areas where the concern over data privacy is of growing interest is collaborative filtering. Collaborative filtering systems are being widely used in E-commerce applications to provide recommendations to users regarding products that might be of interest to them. The prediction accuracy of these systems is dependent on the size and accuracy of the data provided by users. However, the lack of sufficient guidelines governing the use and distribution of user data raises concerns over individual privacy. Users often provide the minimal information that is required for accessing these E-commerce services. The lack of rules governing the use and distribution of data disallows sharing of data among different communities for collaborative filtering. The goals of this thesis are (a) the definition of a standard for classifying DO techniques, (b) the development of a robust cluster preserving data obfuscation algorithm, and (c) the design and implementation of a privacy-preserving shared collaborative filtering framework using the data obfuscation algorithm.
机译:隐私被定义为不受未经授权的入侵的自由。通过在线数据库(例如政府记录,病历和选民名单)获得个人信息会对个人隐私构成威胁。对个人隐私的关注导致一些国家制定了保护隐私的法律法规[56]。但是,即使存在这样的规章制度,个人的无知以及系统中的漏洞也导致了信息泄露。防止数据隐私需要修改数据本身。术语“数据混淆”用于指代在不扭曲数据有用性的前提下修改数据项值的算法类别。本文的主要目的是开发一种数据混淆技术,该技术可提供可靠的隐私保护,同时将数据的可用性损失降至最低。尽管医疗和金融服务是关注信息隐私的两个主要领域,但是侵犯隐私并不局限于这些领域。对数据隐私的关注日益引起关注的领域之一是协作过滤。协作过滤系统已广泛用于电子商务应用程序中,以向用户提供有关他们可能感兴趣的产品的建议。这些系统的预测准确性取决于用户提供的数据的大小和准确性。但是,缺乏管理用户数据使用和分发的足够指南,引起了对个人隐私的担忧。用户通常会提供访问这些电子商务服务所需的最少信息。缺乏管理数据使用和分发的规则,使得不同社区之间无法共享数据以进行协作过滤。本论文的目标是(a)定义DO技术的标准;(b)开发健壮的集群保存数据混淆算法;以及(c)设计和实现隐私保护的共享协作过滤框架使用数据混淆算法。

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