Full Citation
Title: Privacy Preserving Data Sharing in Data Mining Environment
Citation Type: Dissertation/Thesis
Publication Year: 2010
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Abstract: Numerous organizations collect and distribute non-aggregate personal data for a variety of different purposes, including demographic and public health research. In these situations, the data distributor is often faced with a quandary: on one hand, it is important to protect the anonymity and personal information of individuals. While one the other hand, it is also important to preserve the utility of the data for research. This thesis presents an extensive study of this problem. We focus primarily on notions of anonymity that are defined with respect to individual identity, or with respect to the value of a sensitive attribute. We discuss the anonymization techniques over relational data and large survey rating data. For relational data, we propose a variety of techniques that use generalization (also called recoding) and microaggregation to produce a sanitized view, while preserving the utility of the input data. Specifically, we provide a new structure called “Privacy Hash Table”; propose three enhanced privacy models to limit the privacy leakage; we inject the purpose and trust into the data anonymization process to increase the utility of the anonymized data, and we enhance the microaggregation method by using concepts from Information Theory. For survey rating data, we investigate two important problems (satisfaction and publication problems) in anonymizing survey rating data. By utilizing the characteristics of sparseness and high dimensionality, we develop a slicing technique for satisfaction problems. By using graphical representation, we provide a comprehensive analysis of graphical modification strategies. For all the techniques developed in this thesis, we include a set of extensive evaluations to indicate that the techniques are possible to distribute high-quality data that respect several meaningful notions of privacy
Url: https://eprints.usq.edu.au/19641/2/Sun%2C_X_2010_whole.pdf
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Authors: Xiaoxun, Sun
Institution: University of Southern Queensland
Department: Computer Science
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Pages: 1-203
Data Collections: IPUMS USA
Topics: Population Data Science
Countries: United Kingdom, United States