TL;DR
This paper introduces a multi-granularity prompt approach for personalized federated continual learning, effectively addressing spatial-temporal catastrophic forgetting and enhancing personalized model performance through coarse-to-fine knowledge transfer.
Contribution
It proposes a novel multi-granularity prompt framework with a selective fusion mechanism, improving knowledge sharing and personalization in federated continual learning.
Findings
Effective in mitigating spatial-temporal catastrophic forgetting.
Enhances personalized model performance across clients.
Demonstrates superiority over existing methods in experiments.
Abstract
Personalized Federated Continual Learning (PFCL) is a new practical scenario that poses greater challenges in sharing and personalizing knowledge. PFCL not only relies on knowledge fusion for server aggregation at the global spatial-temporal perspective but also needs model improvement for each client according to the local requirements. Existing methods, whether in Personalized Federated Learning (PFL) or Federated Continual Learning (FCL), have overlooked the multi-granularity representation of knowledge, which can be utilized to overcome Spatial-Temporal Catastrophic Forgetting (STCF) and adopt generalized knowledge to itself by coarse-to-fine human cognitive mechanisms. Moreover, it allows more effectively to personalized shared knowledge, thus serving its own purpose. To this end, we propose a novel concept called multi-granularity prompt, i.e., coarse-grained global prompt…
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