Projection-Free Evolution Strategies for Continuous Prompt Search
arXiv cs.CL / 3/17/2026
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Key Points
- The study investigates continuous prompt search as a computationally efficient alternative to parameter tuning in natural language processing tasks.
- It shows that, despite the prompt space having a low-dimensional structure, random projections fail to capture this essential structure.
- The authors propose a projection-free prompt search method based on evolutionary strategies that optimizes directly in the full prompt space with adaptation to the intrinsic dimension.
- A confidence-based regularization mechanism is introduced to improve generalization in few-shot scenarios by increasing the model's confidence in the target verbalizers.
- Experimental results on seven GLUE tasks demonstrate that the proposed approach significantly outperforms existing baselines.
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