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A General Survey of Privacy-Preserving Data Mining Models and Algorithms

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Privacy-Preserving Data Mining, volume 34 of The Kluwer International Series on Advances in Database Systems, Springer US, (2008)
DOI: 10.1007/978-0-387-70992-5_2

Abstract

In recent years, privacy-preserving data mining has been studied extensively, because of the wide proliferation of sensitive information on the internet. A number of algorithmic techniques have been designed for privacy-preserving data mining. In this paper, we provide a review of the state-of-the-art methods for privacy. We discuss methods for randomization, k -anonymization, and distributed privacy-preserving data mining. We also discuss cases in which the output of data mining applications needs to be sanitized for privacy-preservation purposes. We discuss the computational and theoretical limits associated with privacy-preservation over high dimensional data sets.

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