FedSCR: Structure-Based Communication Reduction for Federated Learning

IEEE Transactions on Parallel and Distributed Systems(2021)

引用 31|浏览67
暂无评分
摘要
Federated Learning allows edge devices to collaboratively train a shared model on their local data without leaking user privacy. The non-independent-and-identically-distributed (Non-IID) property of data distribution, which leads to severe accuracy degradation, and enormous communication overhead for aggregating parameters should be tackled in federated learning. In this article, we conduct a detailed analysis of parameter updates on the Non-IID datasets and compare the difference with the IID setting. Experimental results exhibit that parameter update matrices are structure-sparse and show that more gradients could be identified as negligible updates on the Non-IID data. As a result, we propose a structure-based communication reduction algorithm, called FedSCR, that reduces the number of parameters transported through the network while maintaining the model accuracy. FedSCR aggregates the parameter updates over channels and filters, identifies and removes the redundant updates by comparing the aggregated values with a threshold. Unlike the traditional structured pruning methods, FedSCR retains the complete model that does not require to be retrained and fine-tuned. The local loss and weight divergence on each device vary a lot because of the unbalanced data distribution. We further propose an adaptive FedSCR, that dynamically changes the bounded threshold, to enhance the model robustness on the Non-IID data. Evaluation results show that our proposed strategies achieve almost 50 percent upstream communication reduction without loss of accuracy. FedSCR can be integrated into state-of-the-art federated learning algorithms to dramatically reduce the number of parameters pushed to the global server with a tolerable accuracy reduction.
更多
查看译文
关键词
Federated learning,communication reduction,Non-IID data
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要