Stärkung der Stabilität und Plastizität durch zweistufige Prompt-Strategie.
GUIDE introduces a novel approach that utilizes classifier guidance to generate rehearsal samples targeting forgotten information, reducing catastrophic forgetting in continual learning.
AttriCLIP is a non-incremental learner that incrementally extracts knowledge of new classes or tasks without increasing model parameters or requiring replay data.
AttriCLIP is a non-incremental learner that incrementally extracts knowledge of new classes or tasks without the need for additional memory, outperforming previous state-of-the-art methods in realistic settings.
SEED method introduces a novel approach to continual learning by selectively training experts, mitigating forgetting, encouraging diversification, and maintaining high plasticity.
新しい連続学習手法の提案とその効果的な実装に焦点を当てる。
The author proposes STAR-Prompt, a two-level prompting strategy that leverages a foundation model to enhance stability and plasticity in Continual Learning. By introducing semantic residuals and generative replay, the method outperforms existing approaches.
The author introduces GUIDE, a novel continual learning approach that utilizes diffusion models to generate rehearsal samples targeting forgotten information. By integrating classifier guidance techniques, the method reduces catastrophic forgetting and outperforms conventional generative replay methods.