Revisiting "Privacy Preserving Clustering by Data Transformation"

Authors

  • Stanley R. M. Oliveira University of Alberta
  • Osmar R. Zaiane University of Alberta

DOI:

https://doi.org/10.5753/jidm.2010.941

Abstract

Preserving the privacy of individuals when data are shared for clustering is a complex problem. The challenge is how to protect the underlying data values subjected to clustering without jeopardizing the similarity between objects under analysis. In this short paper, we revisit a family of geometric data transformation methods (GDTMs) that distort numerical attributes by translations, scalings, rotations, or even by the combination of these geometric transformations. Such a method was designed to address privacy-preserving clustering, in scenarios where data owners must not only meet privacy requirements but also guarantee valid clustering results. We offer a detailed, comprehensive and up-to-date picture of methods for privacy-preserving clustering by data transformation.

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Published

2010-05-27

How to Cite

Oliveira, S. R. M., & Zaiane, O. R. (2010). Revisiting "Privacy Preserving Clustering by Data Transformation". Journal of Information and Data Management, 1(1), 53. https://doi.org/10.5753/jidm.2010.941

Issue

Section

Regular Papers