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Robust and Privacy-Preserving Collaborative Learning: A Comprehensive Survey
[article]
2021
arXiv
pre-print
With the rapid demand of data and computational resources in deep learning systems, a growing number of algorithms to utilize collaborative machine learning techniques, for example, federated learning, to train a shared deep model across multiple participants. It could effectively take advantage of the resources of each participant and obtain a more powerful learning system. However, integrity and privacy threats in such systems have greatly obstructed the applications of collaborative
arXiv:2112.10183v1
fatcat:ujfz4a5mdrhsbk4kiqoqo2snfe