Privacy-preserving Feature Extraction via Adversarial Training

Pages: 1 - 1
Published: Jan 1, 2020
Abstract
Deep learning is increasingly popular, partly due to its widespread application potential, such as in civilian, government and military domains. Given the exacting computational requirements, cloud computing has been utilized to host user data and model. However, such an approach has potential privacy implications. Therefore, in this paper, we propose a method to protect user’s privacy in the inference phase of deep learning workflow....
Paper Details
Title
Privacy-preserving Feature Extraction via Adversarial Training
Published Date
Jan 1, 2020
Pages
1 - 1
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