Publication | Open Access
Privacy-Preserving Logistic Regression with Distributed Data Sources via Homomorphic Encryption
89
Citations
22
References
2016
Year
Privacy ProtectionEngineeringMachine LearningData ScienceInformation SecurityData PrivacyLogistic RegressionPrivacy SystemComputer ScienceBig DataSecure SystemDistributed Data SourcesData ManagementPrivacyDifferential PrivacyData SecurityCryptographyHomomorphic Encryption
Logistic regression is a powerful machine learning tool to classify data. When dealing with sensitive or private data, cares are necessary. In this paper, we propose a secure system for privacy-protecting both the training and predicting data in logistic regression via homomorphic encryption. Perhaps surprisingly, despite the non-polynomial tasks of training and predicting in logistic regression, we show that only additively homomorphic encryption is needed to build our system. Indeed, we instantiate our system with Paillier, LWE-based, and ring-LWE-based encryption schemes, highlighting the merits and demerits of each instantiation. Besides examining the costs of computation and communication, we carefully test our system over real datasets to demonstrate its utility.
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