Privacy-Preserving Distributed Data Fusion Based on Attribute Protection

Volume: 15, Issue: 10, Pages: 5765 - 5777
Published: Oct 1, 2019
Abstract
Privacy-preserving distributed data fusion is a pretreatment process in data mining involving security models. In this paper, we present a method of implementing multiparty data fusion, wherein redundant attributes of a same set of individuals are stored by multiple parties. In particular, the merged data does not suffer from background attacks or other reasoning attacks, and individual attributes are not leaked. To achieve this, we present...
Paper Details
Title
Privacy-Preserving Distributed Data Fusion Based on Attribute Protection
Published Date
Oct 1, 2019
Volume
15
Issue
10
Pages
5765 - 5777
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