Memory-Based Optimization Methods for Model-Agnostic Meta-Learning and Personalized Federated Learning
Wang, Bokun, Yuan, Zhuoning, Ying, Yiming, Yang, Tianbao
–arXiv.org Artificial Intelligence
In recent years, model-agnostic meta-learning (MAML) has become a popular research area. However, the stochastic optimization of MAML is still underdeveloped. Existing MAML algorithms rely on the "episode" idea by sampling a few tasks and data points to update the meta-model at each iteration. Nonetheless, these algorithms either fail to guarantee convergence with a constant mini-batch size or require processing a large number of tasks at every iteration, which is unsuitable for continual learning or cross-device federated learning where only a small number of tasks are available per iteration or per round. To address these issues, this paper proposes memory-based stochastic algorithms for MAML that converge with vanishing error. The proposed algorithms require sampling a constant number of tasks and data samples per iteration, making them suitable for the continual learning scenario. Moreover, we introduce a communication-efficient memory-based MAML algorithm for personalized federated learning in cross-device (with client sampling) and cross-silo (without client sampling) settings. Our theoretical analysis improves the optimization theory for MAML, and our empirical results corroborate our theoretical findings. Interested readers can access our code at https://github.com/bokun-wang/moml.
arXiv.org Artificial Intelligence
Apr-24-2023
- Country:
- North America > United States
- Texas > Brazos County
- College Station (0.14)
- New York > Albany County
- Albany (0.04)
- Iowa > Johnson County
- Iowa City (0.14)
- Texas > Brazos County
- Europe > Germany
- North Rhine-Westphalia > Upper Bavaria > Munich (0.04)
- North America > United States
- Genre:
- Research Report > New Finding (0.45)
- Technology: