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Utility Enhancement for Privacy Preserving Health Data Publishing

Full Text: ADMA2013.pdf PDF

In the medical field, we are amassing phenomenal amounts of data. This data is imperative in discovering patterns and trends to help improve healthcare. Yet the researchers cannot rejoice as the data cannot be easily shared, because health data custodians have the understandable ethical and legal responsibility to maintain the privacy of individuals. Many techniques of anonymization have been proposed to provide means of publishing data for research purposes without jeopardizing privacy. However, as flaws are discovered in these techniques, other more stringent methods are proposed. The strictness of the techniques is putting in question the utility of the data after severe anonymization. In this paper, we investigate several rigorous anonymization techniques with classification to evaluate the utility loss, and propose a framework to enhance the utility of anonymized data.

Citation

L. Wu, H. He, O. Zaiane. "Utility Enhancement for Privacy Preserving Health Data Publishing". International Conference on Advanced Data Mining and Applications, Hongzhou, China, pp 311-322, December 2013.

Keywords: Data Publishing, Privacy Preservation, Anonymization, SVM
Category: In Conference
Web Links: Webdocs

BibTeX

@incollection{Wu+al:ADMA13,
  author = {Lengdong Wu and Hua He and Osmar R. Zaiane},
  title = {Utility Enhancement for Privacy Preserving Health Data Publishing},
  Pages = {311-322},
  booktitle = {International Conference on Advanced Data Mining and
    Applications},
  year = 2013,
}

Last Updated: November 14, 2019
Submitted by Sabina P

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