Achieving efficient and privacy-preserving neural network training and prediction in cloud environments
The neural network has been widely used to train predictive models for applications such as image processing, disease prediction, and face recognition. To produce more accurate models, powerful third parties (e.g., clouds) are usually employed to collect data from a large number of users, which howe...
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sg-smu-ink.sis_research-96702024-02-29T07:42:03Z Achieving efficient and privacy-preserving neural network training and prediction in cloud environments ZHANG, Chuan HU, Chenfei WU, Tong ZHU, Liehuang LIU, Ximeng The neural network has been widely used to train predictive models for applications such as image processing, disease prediction, and face recognition. To produce more accurate models, powerful third parties (e.g., clouds) are usually employed to collect data from a large number of users, which however may raise concerns about user privacy. In this paper, we propose an Efficient and Privacy-preserving Neural Network scheme, named EPNN, to deal with the privacy issues in cloud-based neural networks. EPNN is designed based on a two-cloud model and techniques of data perturbation and additively homomorphic cryptosystem. This scheme enables two clouds to cooperatively perform neural network training and prediction in a privacy-preserving manner and significantly reduces the computation and communication overhead among participating entities. Through a detailed analysis, we demonstrate the security of EPNN. Extensive experiments based on real-world datasets show EPNN is more efficient than existing schemes in terms of computational costs and communication overhead. 2023-10-31T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/8667 info:doi/10.1109/TDSC.2022.3208706 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Privacy-preserving neural network data perturbation additively homomorphic cryptosystem cloud environments Databases and Information Systems OS and Networks |
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Privacy-preserving neural network data perturbation additively homomorphic cryptosystem cloud environments Databases and Information Systems OS and Networks |
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Privacy-preserving neural network data perturbation additively homomorphic cryptosystem cloud environments Databases and Information Systems OS and Networks ZHANG, Chuan HU, Chenfei WU, Tong ZHU, Liehuang LIU, Ximeng Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
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The neural network has been widely used to train predictive models for applications such as image processing, disease prediction, and face recognition. To produce more accurate models, powerful third parties (e.g., clouds) are usually employed to collect data from a large number of users, which however may raise concerns about user privacy. In this paper, we propose an Efficient and Privacy-preserving Neural Network scheme, named EPNN, to deal with the privacy issues in cloud-based neural networks. EPNN is designed based on a two-cloud model and techniques of data perturbation and additively homomorphic cryptosystem. This scheme enables two clouds to cooperatively perform neural network training and prediction in a privacy-preserving manner and significantly reduces the computation and communication overhead among participating entities. Through a detailed analysis, we demonstrate the security of EPNN. Extensive experiments based on real-world datasets show EPNN is more efficient than existing schemes in terms of computational costs and communication overhead. |
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ZHANG, Chuan HU, Chenfei WU, Tong ZHU, Liehuang LIU, Ximeng |
author_facet |
ZHANG, Chuan HU, Chenfei WU, Tong ZHU, Liehuang LIU, Ximeng |
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ZHANG, Chuan |
title |
Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
title_short |
Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
title_full |
Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
title_fullStr |
Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
title_full_unstemmed |
Achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
title_sort |
achieving efficient and privacy-preserving neural network training and prediction in cloud environments |
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Institutional Knowledge at Singapore Management University |
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2023 |
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https://ink.library.smu.edu.sg/sis_research/8667 |
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