A New Class of Attacks on Time Series Data Mining

Ye Zhu, Yongjian Fu, Huirong Fu

    Research output: Contribution to journalArticlepeer-review

    Abstract

    Traditional research on preserving privacy in data mining focuses on time-invariant privacy issues. With the emergence of time series data mining, traditional snapshot-based privacy issues need to be extended to be multi-dimensional with the addition of time dimension. We find current techniques to preserve privacy in data mining are not effective in preserving time-domain privacy. We present the data flow separation attack on privacy in time series data mining, which is based on blind source separation techniques from statistical signal processing. Our experiments with real data show that this attack is effective. By combining the data flow separation method and the frequency matching method, an attacker can identify data sources and compromise time-domain privacy. We propose possible countermeasures to the data flow separation attack in the paper.

    Original languageAmerican English
    JournalIntelligent Data Analysis
    Volume14
    DOIs
    StatePublished - Jan 1 2010

    Keywords

    • Privacy
    • Time series data mining
    • Blind source separation

    Disciplines

    • Computer Sciences

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