Privacy-preserving Machine Learning as a Service

Author:

Hesamifard Ehsan1,Takabi Hassan1,Ghasemi Mehdi2,Wright Rebecca N.3

Affiliation:

1. Department of Computer Science and Engineering, University of North Texas, Denton , TX, USA

2. Department of Mathematics and Statistics, University of Saskatchewan, Saskatoon , Canada

3. Department of Computer Science, Rutgers University, Piscataway , NJ, USA

Abstract

Abstract Machine learning algorithms based on deep Neural Networks (NN) have achieved remarkable results and are being extensively used in different domains. On the other hand, with increasing growth of cloud services, several Machine Learning as a Service (MLaaS) are offered where training and deploying machine learning models are performed on cloud providers’ infrastructure. However, machine learning algorithms require access to the raw data which is often privacy sensitive and can create potential security and privacy risks. To address this issue, we present CryptoDL, a framework that develops new techniques to provide solutions for applying deep neural network algorithms to encrypted data. In this paper, we provide the theoretical foundation for implementing deep neural network algorithms in encrypted domain and develop techniques to adopt neural networks within practical limitations of current homomorphic encryption schemes. We show that it is feasible and practical to train neural networks using encrypted data and to make encrypted predictions, and also return the predictions in an encrypted form. We demonstrate applicability of the proposed CryptoDL using a large number of datasets and evaluate its performance. The empirical results show that it provides accurate privacy-preserving training and classification.

Publisher

Walter de Gruyter GmbH

Subject

General Medicine

Reference54 articles.

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2. [2] L. J. M. Aslett, P. M. Esperança, C. C. Holmes. Encrypted statistical machine learning: new privacy preserving methods. CoRR abs/1508.06845 (2015).

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