Anonymizing Streaming Data for Privacy Protection

In many applications, transaction data arrive in the form of high speed data streams. These data contain a lot of information about customers, not just transactions, and thus have to be carefully managed to protect customers' privacy. This paper presents a novel method called SKY (stream K-anon Ymtiy) to continuously facilitate k-anonymity on data streams. Experimental results show that SKY is efficient and effective.

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