Improved angelization technique against background knowledge attack for 1:M microdata

Author:

Fazal Rabeeha1,Khan Razaullah2,Anjum Adeel3,Syed Madiha Haider3,Khan Abid4,Rehman Semeen5

Affiliation:

1. Department of Computer Science, COMSATS Institute of Information Technology, Islamabad, Pakistan

2. Department of Computer Science, University of Engineering and Technology, Mardan, Pakistan

3. Institute of Information Technology, Quaid-i-Azam University, Islamabad, Pakistan

4. College of Science and Engineer, University of Derby, Derby, United Kingdom

5. Institute of Computer Technology, Technische Universität Wien, Wien, Austria

Abstract

With the advent of modern information systems, sharing Electronic Health Records (EHRs) with different organizations for better medical treatment, and analysis is beneficial for both academic as well as for business development. However, an individual’s personal privacy is a big concern because of the trust issue across organizations. At the same time, the utility of the shared data that is required for its favorable use is also important. Studies show that plenty of conventional work is available where an individual has only one record in a dataset (1:1 dataset), which is not the case in many applications. In a more realistic form, an individual may have more than one record in a dataset (1:M). In this article, we highlight the high utility loss and inapplicability for the 1:M dataset of theθ-Sensitivek-Anonymity privacy model. The high utility loss and low data privacy of (pl)-angelization, and (kl)-diversity for the 1:M dataset. As a mitigation solution, we propose an improved (θk)-utility algorithm to preserve enhanced privacy and utility of the anonymized 1:M dataset. Experiments on the real-world dataset reveal that the proposed approach outperforms its counterpart, in terms of utility and privacy for the 1:M dataset.

Funder

TU Wien Bibliothek through its Open Access Funding Programme

Publisher

PeerJ

Subject

General Computer Science

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