FLAG: Fast Label-Adaptive Aggregation for Multi-label Classification in Federated Learning
Chang, Shih-Fang, Hsu, Benny Wei-Yun, Chang, Tien-Yu, Tseng, Vincent S.
–arXiv.org Artificial Intelligence
Federated learning aims to share private data to maximize the data utility without privacy leakage. Previous federated learning research mainly focuses on multi-class classification problems. However, multi-label classification is a crucial research problem close to real-world data properties. Nevertheless, a limited number of federated learning studies explore this research problem. Existing studies of multi-label federated learning did not consider the characteristics of multi-label data, i.e., they used the concept of multi-class classification to verify their methods' performance, which means it will not be feasible to apply their methods to real-world applications. Therefore, this study proposed a new multi-label federated learning framework with a Clustering-based Multi-label Data Allocation (CMDA) and a novel aggregation method, Fast Label-Adaptive Aggregation (FLAG), for multi-label classification in the federated learning environment. The experimental results demonstrate that our methods only need less than 50\% of training epochs and communication rounds to surpass the performance of state-of-the-art federated learning methods.
arXiv.org Artificial Intelligence
Feb-27-2023
- Country:
- Asia > Taiwan (0.04)
- North America > United States
- California > San Francisco County
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- Research Report > New Finding (0.66)
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