Abstract
Contemporary continual learning approaches typically select prompts from a pool, which function as supplementary inputs to a pretrained model. However, this strategy is hindered by the inherent noise of its selection approach when handling increasing tasks. In response to these challenges, we reformulate the prompting approach for continual learning and propose the prompt customization (PC) method. PC mainly comprises a prompt generation module (PGM) and a prompt modulation module (PMM). In contrast to conventional methods that employ hard prompt selection, PGM assigns different coefficients to prompts from a fixed-sized pool of prompts and generates tailored prompts. Moreover, PMM further modulates the prompts by adaptively assigning weights according to the correlations between input data and corresponding prompts. We evaluate our method on four benchmark datasets for three diverse settings, including the class, domain, and task-agnostic incremental learning tasks. Experimental results demonstrate consistent improvement (by up to 16.2%), yielded by the proposed method, over the state-of-the-art (SOTA) techniques. The code has been released online.
| Original language | English |
|---|---|
| Pages (from-to) | 1373-1385 |
| Number of pages | 13 |
| Journal | IEEE Transactions on Artificial Intelligence |
| Volume | 6 |
| Issue number | 5 |
| DOIs | |
| State | Published - 2025 |
| Externally published | Yes |
Keywords
- Continual learning
- incremental learning
- prompt customization
- prompt generation
- prompt modulation
- prompting
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