AI RESEARCH
ReBaPL: Repulsive Bayesian Prompt Learning
arXiv CS.LG
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ArXi:2511.17339v2 Announce Type: replace Prompt learning has emerged as an effective technique for fine-tuning large-scale foundation models for downstream tasks. However, conventional prompt learning methods are prone to overfitting and can struggle with out-of-distribution generalization. To address these limitations, Bayesian prompt learning has been proposed, which frames prompt optimization as a Bayesian inference problem to enhance robustness. This paper