PriDe: A Quantitative Measure of Privacy-Loss in Interactive Querying Settings

2019 10th IFIP International Conference on New Technologies, Mobility and Security (NTMS)(2019)

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摘要
This paper presents, PriDe, a model to measure the deviation of an analyst's (user) querying behaviour from normal querying behaviour. The deviation is measured in terms of privacy, that is to say, how much of the privacy loss has incurred due to this shift in querying behaviour. The shift is represented in terms of a score - a privacy-loss score, the higher the score the more the loss in privacy. Querying behaviour of analysts are modelled using n-grams of SQL query and subsequently, behavioural profiles are constructed. Profiles are then compared in terms of privacy resulting in a quantified score indicating the privacy loss.
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关键词
Electronic Privacy,Relational Database Management Systems,Privacy-loss score,N-gram model
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