An Effective Clustering Approach to Web Query Log Anonymization
Abstract
Web query log data contain information useful to research; however, release of such data can re-identify the search engine users issuing the queries. These privacy concerns go far beyond removing explicitly identifying information such as name and address, since non-identifying personal data can be combined with publicly available information to pinpoint to an individual. In this work we model web query logs as unstructured transaction data and present a novel transaction anonymization technique based on clustering and generalization techniques to achieve the k-anonymity privacy. We conduct extensive experiments on the AOL query log data. Our results show that this method results in a higher data utility compared to the state of-the-art transaction anonymization methods.
Cite
@article{arxiv.1012.0663,
title = {An Effective Clustering Approach to Web Query Log Anonymization},
author = {Amin Milani Fard and Ke Wang},
journal= {arXiv preprint arXiv:1012.0663},
year = {2010}
}
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9 pages