Prompt-Enhanced: Leveraging language representation for prompt continual learning.
Continual learning enables models to learn from an evolving stream of data without forgetting the previously acquired skills. Traditional methods often rely on the rehearsal buffers or extended network structures to retain the previous knowledge, which incurs additional memory overhead and potential privacy concerns. Prompt-based methods have emerged as a promising alternative with the advent of large-scale pre-trained vision transformers. These methods effectively preserve the prior knowledge by retrieving the task-specific prompts. However, directly applying prompts for downstream tasks may result in a generalized information loss, which leads to the diminished performance in long-term continual learning. To address this limitation, we propose Prompt-E, a lightweight, plug-and-play method that enhances prompt-based continual learning by incorporating language-guided regularization. Prompt-E utilizes language representation to enhance the effectivity of prompt features dynamically, thus ensuring the task-specific relevance and stability across continual tasks. Our method aims to handle the challenges of prompt conflict and catastrophic forgetting by constraining both the CLS token and the prompts within a continual learning framework. Sufficient experiments on three challenging benchmarks demonstrate the advantages of Prompt-E over representative prompt-based methods, including significant accuracy gains in class-incremental tasks. Notably, Prompt-E improves the accuracy performance of L2P on DomainNet by 3.29% with only additional 1.89M parameters. Our ablation studies further validate the effectiveness of language-guided prompt regularization.
Duke Scholars
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- Neural Networks, Computer
- Machine Learning
- Learning
- Language
- Humans
- Artificial Intelligence & Image Processing
- 4905 Statistics
- 4611 Machine learning
- 4602 Artificial intelligence
Citation
Published In
DOI
EISSN
ISSN
Publication Date
Volume
Start / End Page
Related Subject Headings
- Neural Networks, Computer
- Machine Learning
- Learning
- Language
- Humans
- Artificial Intelligence & Image Processing
- 4905 Statistics
- 4611 Machine learning
- 4602 Artificial intelligence