Byzantine Resilient Distributed Multi-Task Learning
–Neural Information Processing Systems
However, distributed algorithms for learning relatedness among tasks are not resilient in the presence of Byzantine agents. In this paper, we present an approach for Byzantine resilient distributed multi-task learning. We propose an efficient online weight assignment rule by measuring the accumulated loss using an agent's data and its neighbors' models. A small accumulated loss indicates a large similarity between the two tasks.
Neural Information Processing Systems
Aug-16-2025, 14:44:11 GMT
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