Paper ID: 2203.08055

Modular and Parameter-Efficient Multimodal Fusion with Prompting

Sheng Liang, Mengjie Zhao, Hinrich Schütze

Recent research has made impressive progress in large-scale multimodal pre-training. In the context of the rapid growth of model size, it is necessary to seek efficient and flexible methods other than finetuning. In this paper, we propose to use prompt vectors to align the modalities. Our method achieves comparable performance to several other multimodal fusion methods in low-resource settings. We further show that our method is modular and parameter-efficient for processing tasks involving two or more data modalities.

Submitted: Mar 15, 2022