4.7 Article

Survey on Improving Data Utility in Differentially Private Sequential Data Publishing

期刊

IEEE TRANSACTIONS ON BIG DATA
卷 7, 期 4, 页码 729-749

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBDATA.2017.2715334

关键词

Data privacy; Privacy; Sensitivity; Sensors; Big Data; Correlation; Mobile communication; Big data; privacy-preserving schemes; sequential data; differential privacy; data utility; data correlations

资金

  1. Natural Science Foundation of China (NSFC) [61572398, 61373115, 61402356]
  2. University System of Maryland (USM) Wilson H. Elkins Professorship Fund

向作者/读者索取更多资源

This paper comprehensively reviews and investigates existing schemes for providing differential privacy from a broad perspective, discussing issues such as privacy guarantees, effectiveness, and efficiency in improving data utility. The existing schemes are categorized into different mechanisms, with a focus on analyzing and comparing their concepts and principles, aiming to enhance data utility.
The massive generation, extensive sharing, and deep exploitation of data in the big data era have raised unprecedented privacy threats. To address privacy concerns, various privacy paradigms have been proposed to achieve a good tradeoff between privacy and data utility. Particularly, differential privacy has been well accepted as one of the de facto standard for privacy preservation, and numerous schemes guaranteeing differential privacy have been proposed. Nonetheless, most of the existing works claiming a superior utility-privacy tradeoff only present specific methods, with distinct perspectives, and a complete comparative analysis and evaluation study has not been fully investigated. To this end, in this paper we review and investigate existing schemes on providing differential privacy from a broad and encompassing perspective to provide a comprehensive survey with respect to both the privacy guarantee and the effectiveness and efficiency in utility improvement. We categorize the existing schemes into distribution optimization, sensitivity calibration, transformation, decomposition, and correlations exploitation, based on their mechanisms in improving data utility. We also conduct some analysis and comparison of their various concepts and principles, focusing on improvements to data utility. Finally, we outline some challenges and provide future research directions.

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