Privacy-preserving heterogeneous health data sharing
Author(s) -
Noman Mohammed,
Xiaoqian Jiang,
Rui Chen,
Benjamin C. M. Fung,
Lucila OhnoMachado
Publication year - 2012
Publication title -
journal of the american medical informatics association
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.614
H-Index - 150
eISSN - 1527-974X
pISSN - 1067-5027
DOI - 10.1136/amiajnl-2012-001027
Subject(s) - differential privacy , computer science , data mining , scalability , data publishing , information privacy , discriminative model , information sensitivity , raw data , private information retrieval , privacy software , probabilistic logic , data anonymization , machine learning , computer security , artificial intelligence , database , publishing , political science , law , programming language
Privacy-preserving data publishing addresses the problem of disclosing sensitive data when mining for useful information. Among existing privacy models, ε-differential privacy provides one of the strongest privacy guarantees and makes no assumptions about an adversary's background knowledge. All existing solutions that ensure ε-differential privacy handle the problem of disclosing relational and set-valued data in a privacy-preserving manner separately. In this paper, we propose an algorithm that considers both relational and set-valued data in differentially private disclosure of healthcare data.
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