In recent years, large-scale pre-trained multimodal models (LMMs) generally emerge to integrate the vision and language modalities, achieving considerable success in multimodal tasks, such as text-image classification. The growing size of LMMs, however, results in a significant computational cost for fine-tuning these models for downstream tasks. Hence, prompt-based interaction strategy is studied to align modalities more efficiently. In this context, we propose a novel efficient prompt-based multimodal interaction strategy, namely Efficient Prompt Interaction for text-image Classification (EPIC). Specifically, we utilize temporal prompts on intermediate layers, and integrate different modalities with similarity-based prompt interaction, to leverage sufficient information exchange between modalities. Utilizing this approach, our method achieves reduced computational resource consumption and fewer trainable parameters (about 1\% of the foundation model) compared to other fine-tuning strategies. Furthermore, it demonstrates superior performance on the UPMC-Food101 and SNLI-VE datasets, while achieving comparable performance on the MM-IMDB dataset.
@article{arxiv.2507.07415,
title = {EPIC: Efficient Prompt Interaction for Text-Image Classification},
author = {Xinyao Yu and Hao Sun and Zeyu Ling and Ziwei Niu and Zhenjia Bai and Rui Qin and Yen-Wei Chen and Lanfen Lin},
journal= {arXiv preprint arXiv:2507.07415},
year = {2025}
}
Comments
arXiv admin note: substantial text overlap with arXiv:2401.14856