Privacy Preserving Machine Learning with Homomorphic Encryption and Federated Learning

Privacy protection has been an important concern with the great success of machine learning. In this paper, it proposes a multi-party privacy preserving machine learning framework, named PFMLP, based on partially homomorphic encryption and federated learning. The core idea is all learning parties ju...

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Vydané v:Future internet Ročník 13; číslo 4; s. 94
Hlavní autori: Fang, Haokun, Qian, Quan
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Basel MDPI AG 01.04.2021
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ISSN:1999-5903, 1999-5903
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Shrnutí:Privacy protection has been an important concern with the great success of machine learning. In this paper, it proposes a multi-party privacy preserving machine learning framework, named PFMLP, based on partially homomorphic encryption and federated learning. The core idea is all learning parties just transmitting the encrypted gradients by homomorphic encryption. From experiments, the model trained by PFMLP has almost the same accuracy, and the deviation is less than 1%. Considering the computational overhead of homomorphic encryption, we use an improved Paillier algorithm which can speed up the training by 25–28%. Moreover, comparisons on encryption key length, the learning network structure, number of learning clients, etc. are also discussed in detail in the paper.
Bibliografia:ObjectType-Article-1
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content type line 14
ISSN:1999-5903
1999-5903
DOI:10.3390/fi13040094