Authors
Jiasi Weng, Jian Weng, Jilian Zhang, Ming Li, Yue Zhang, Weiqi Luo
Publication date
2019/11/8
Journal
IEEE Transactions on Dependable and Secure Computing
Volume
18
Issue
5
Pages
2438-2455
Publisher
IEEE
Description
Deep learning can achieve higher accuracy than traditional machine learning algorithms in a variety of machine learning tasks. Recently, privacy-preserving deep learning has drawn tremendous attention from information security community, in which neither training data nor the training model is expected to be exposed. Federated learning is a popular learning mechanism, where multiple parties upload local gradients to a server and the server updates model parameters with the collected gradients. However, there are many security problems neglected in federated learning, for example, the participants may behave incorrectly in gradient collecting or parameter updating, and the server may be malicious as well. In this article, we present a distributed, secure, and fair deep learning framework named DeepChain to solve these problems. DeepChain provides a value-driven incentive mechanism based on …
Total citations
20182019202020212022202320245266110615016086
Scholar articles
J Weng, J Weng, J Zhang, M Li, Y Zhang, W Luo - IEEE Transactions on Dependable and Secure …, 2019