MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing
Privacy in the Internet of Things is a fundamental challenge for the Ubiquitous healthcare systems that depend on the data aggregated and collaborative deep learning among different parties. This paper proposes the MSCryptoNet, a novel framework that enables the scalable execution and the conversion...
| Published in: | IEEE Access |
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| Main Authors: | , , , |
| Format: | Article |
| Language: | English |
| Published: |
IEEE
2019-01-01
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| Subjects: | |
| Online Access: | https://ieeexplore.ieee.org/document/8651459/ |
| _version_ | 1851873189791006720 |
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| author | Owusu-Agyemang Kwabena Zhen Qin Tianming Zhuang Zhiguang Qin |
| author_facet | Owusu-Agyemang Kwabena Zhen Qin Tianming Zhuang Zhiguang Qin |
| author_sort | Owusu-Agyemang Kwabena |
| collection | DOAJ |
| container_title | IEEE Access |
| description | Privacy in the Internet of Things is a fundamental challenge for the Ubiquitous healthcare systems that depend on the data aggregated and collaborative deep learning among different parties. This paper proposes the MSCryptoNet, a novel framework that enables the scalable execution and the conversion of the state-of-the-art learned neural network to the MSCryptoNet models in the privacy-preservation setting. We also design a method for approximation of the activation function basically used in the convolutional neural network (i.e., Sigmoid and Rectified linear unit) with low degree polynomials, which is vital for computations in the homomorphic encryption schemes. Our model seems to target the following scenarios: 1) the practical way to enforce the evaluation of classifier whose inputs are encrypted with possibly different encryption schemes or even different keys while securing all operations including intermediate results and 2) the minimization of the communication and computational cost of the data providers. The MSCryptoNet is based on the multi-scheme fully homomorphic encryption. We also prove that the MSCryptoNet as a privacy-preserving deep learning scheme over the aggregated encrypted data is secured. |
| format | Article |
| id | doaj-art-e933159a42b84d2da85df51e75cd5584 |
| institution | Directory of Open Access Journals |
| issn | 2169-3536 |
| language | English |
| publishDate | 2019-01-01 |
| publisher | IEEE |
| record_format | Article |
| spelling | doaj-art-e933159a42b84d2da85df51e75cd55842025-08-19T22:16:02ZengIEEEIEEE Access2169-35362019-01-017293442935410.1109/ACCESS.2019.29012198651459MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud ComputingOwusu-Agyemang Kwabena0Zhen Qin1https://orcid.org/0000-0002-6943-2288Tianming Zhuang2Zhiguang Qin3School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, ChinaSchool of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, ChinaSchool of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, ChinaSchool of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu, ChinaPrivacy in the Internet of Things is a fundamental challenge for the Ubiquitous healthcare systems that depend on the data aggregated and collaborative deep learning among different parties. This paper proposes the MSCryptoNet, a novel framework that enables the scalable execution and the conversion of the state-of-the-art learned neural network to the MSCryptoNet models in the privacy-preservation setting. We also design a method for approximation of the activation function basically used in the convolutional neural network (i.e., Sigmoid and Rectified linear unit) with low degree polynomials, which is vital for computations in the homomorphic encryption schemes. Our model seems to target the following scenarios: 1) the practical way to enforce the evaluation of classifier whose inputs are encrypted with possibly different encryption schemes or even different keys while securing all operations including intermediate results and 2) the minimization of the communication and computational cost of the data providers. The MSCryptoNet is based on the multi-scheme fully homomorphic encryption. We also prove that the MSCryptoNet as a privacy-preserving deep learning scheme over the aggregated encrypted data is secured.https://ieeexplore.ieee.org/document/8651459/Internet of Thingsprivacy-preservingfully homomorphic encryption |
| spellingShingle | Owusu-Agyemang Kwabena Zhen Qin Tianming Zhuang Zhiguang Qin MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing Internet of Things privacy-preserving fully homomorphic encryption |
| title | MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing |
| title_full | MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing |
| title_fullStr | MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing |
| title_full_unstemmed | MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing |
| title_short | MSCryptoNet: Multi-Scheme Privacy-Preserving Deep Learning in Cloud Computing |
| title_sort | mscryptonet multi scheme privacy preserving deep learning in cloud computing |
| topic | Internet of Things privacy-preserving fully homomorphic encryption |
| url | https://ieeexplore.ieee.org/document/8651459/ |
| work_keys_str_mv | AT owusuagyemangkwabena mscryptonetmultischemeprivacypreservingdeeplearningincloudcomputing AT zhenqin mscryptonetmultischemeprivacypreservingdeeplearningincloudcomputing AT tianmingzhuang mscryptonetmultischemeprivacypreservingdeeplearningincloudcomputing AT zhiguangqin mscryptonetmultischemeprivacypreservingdeeplearningincloudcomputing |
