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Learning Optimal Prompt Ensemble for Multi-source Visual Prompt Transfer

Learning Optimal Prompt Ensemble for Multi-source Visual Prompt Transfer

来源:Arxiv_logoArxiv
英文摘要

Prompt tuning has emerged as a lightweight adaptation strategy for adapting foundation models to downstream tasks, particularly in resource-constrained systems. As pre-trained prompts have become valuable intellectual assets, combining multiple source prompts offers a promising approach to enhance generalization to new tasks by leveraging complementary knowledge from diverse sources. However, naive aggregation of these prompts often leads to representation collapse due to mutual interference, undermining their collective potential. To address these challenges, we propose HGPrompt, an adaptive framework for multi-source prompt transfer that learns optimal ensemble weights by jointly optimizing dual objectives: transferability and stability. Specifically, we first introduce an information-theoretic metric to evaluate the transferability of prompt-induced features on the target task, capturing the intrinsic alignment between the feature representations. Additionally, we propose a novel Gradient Alignment Regularization to mitigate gradient conflicts among prompts, enabling stable and coherent knowledge transfer from multiple sources while suppressing interference. Extensive experiments on the large-scale VTAB benchmark demonstrate that HGPrompt achieves state-of-the-art performance, validating its effectiveness in multi-source prompt transfer.

Yanru Wu、Zijie Zhao、Guan Wang、Yang Li、Enming Zhang、Liwen Cao

计算技术、计算机技术

Yanru Wu,Zijie Zhao,Guan Wang,Yang Li,Enming Zhang,Liwen Cao.Learning Optimal Prompt Ensemble for Multi-source Visual Prompt Transfer[EB/OL].(2025-04-09)[2025-04-27].https://arxiv.org/abs/2504.12311.点此复制

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