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arxiv: 0810.5582 · v2 · submitted 2008-10-31 · 💻 cs.DB · cs.DS

Anonymizing Unstructured Data

classification 💻 cs.DB cs.DS
keywords datasetsalgorithmsanonymizingdataindividualk-anonymityproblemquery
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In this paper we consider the problem of anonymizing datasets in which each individual is associated with a set of items that constitute private information about the individual. Illustrative datasets include market-basket datasets and search engine query logs. We formalize the notion of k-anonymity for set-valued data as a variant of the k-anonymity model for traditional relational datasets. We define an optimization problem that arises from this definition of anonymity and provide O(klogk) and O(1)-approximation algorithms for the same. We demonstrate applicability of our algorithms to the America Online query log dataset.

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