EAI Endorsed Transactions on Security and Safety (Jan 2019)

Differentially Private High-Dimensional Data Publication via Markov Network

  • Wei Zhang,
  • Jingwen Zhao,
  • Fengqiong Wei,
  • Yunfang Chen

DOI
https://doi.org/10.4108/eai.29-7-2019.159626
Journal volume & issue
Vol. 6, no. 19

Abstract

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Differentially private data publication has recently received considerable attention. However, it faces some challenges in differentially private high-dimensional data publication, such as the complex attribute relationships, the high computationalcomplexity and data sparsity. Therefore, we propose PrivMN, a novel method to publish high-dimensional data with differential privacy guarantee. We first use the Markov model to represent the mutual relationships between attributes to solve the problem that the direction of relationship between variables cannot be determined in practical application. We then take advantage of approximate inference to calculate the joint distribution of high-dimensional data under differential privacy to figure out the computational and spatial complexity of accurate reasoning. Extensive experiments on real datasets demonstrate that our solution makes the published high-dimensional synthetic datasets more efficient under the guaranteeof differential privacy.

Keywords