Jul 24, 2023
Speaker · 0 followers
Speaker · 0 followers
Speaker · 0 followers
Speaker · 1 follower
We study how to train personalized models for different tasks on devices with limited data in a decentralized setting. We propose “Structured Cooperative Learning (SCooL)”, in which a cooperation graph across devices is generated by a graphical model prior and it automatically coordinates mutual learning between devices. By choosing graphical models enforcing different structures, we can derive a rich class of classical and novel decentralized learning algorithms via standard variational inference. In particular, we show three examples that adopt Dirac distribution, stochastic block model (SBM), and attention as the prior generating the cooperation graph. These EM-type algorithms alternate between updating the cooperation graph and cooperative learning of local models. They can automatically capture the cross-task correlations among devices by only monitoring their model updating in order to optimize the cooperation graph. We evaluate SCooL and compare it with existing decentralized learning methods on an extensive set of benchmarks, on which SCooL always achieves the highest accuracy and shows significant advantages over other baselines on communication efficiency and personalized models' accuracy.We study how to train personalized models for different tasks on devices with limited data in a decentralized setting. We propose “Structured Cooperative Learning (SCooL)”, in which a cooperation graph across devices is generated by a graphical model prior and it automatically coordinates mutual learning between devices. By choosing graphical models enforcing different structures, we can derive a rich class of classical and novel decentralized learning algorithms via standard variational inferen…
Professional recording and live streaming, delivered globally.
Presentations on similar topic, category or speaker
Zhiyu Mei, …