Litcius/Paper detail

Efficient and Privacy-Preserving Decision Tree Classification for Health Monitoring Systems

Jinwen Liang, Zheng Qin, Liang Xue, Xiaodong Lin, Xuemin Shen

2021IEEE Internet of Things Journal37 citationsDOI

Abstract

Due to the increasing healthcare costs and the advance of wireless technology, health monitoring systems have been widely adopted recently. In health monitoring systems, a hospital outsources a clinical decision model to a cloud service provider, which receives biomedical data from remote clients and produces clinical decisions based on the outsourced model. Due to critical privacy concerns, both the clinical decision model and biomedical data should be protected. In this article, we propose an efficient and privacy-preserving decision tree (PPDT) classification scheme for health monitoring systems. Specifically, we first transform a decision tree classifier (i.e., the clinical decision model) into the Boolean vectors. Then, we leverage symmetric key encryption to encrypt the Boolean vectors as encrypted indices. The PPDT classification is achieved by searching the encrypted indices with encrypted tokens. We formulate a leakage function and provide the security definition and simulation-based proof for PPDT. The performance analyses demonstrate that PPDT is very efficient in terms of computation, communication, and storage. Experimental evaluations show that PPDT only requires microsecond-level execution time, kilobyte-level communication costs, and kilobyte-level storage costs on the test data set.

Topics & Concepts

Computer scienceEncryptionDecision treeDecision tree learningData miningInformation privacyLeverage (statistics)Theoretical computer scienceComputer securityMachine learningCryptography and Data SecurityPrivacy-Preserving Technologies in DataCloud Data Security Solutions