Lawrence Keunho Jang


2024

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MMoE: Enhancing Multimodal Models with Mixtures of Multimodal Interaction Experts
Haofei Yu | Zhengyang Qi | Lawrence Keunho Jang | Russ Salakhutdinov | Louis-Philippe Morency | Paul Pu Liang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing

Advances in multimodal models have greatly improved how interactions relevant to various tasks are modeled. Today’s multimodal models mainly focus on the correspondence between images and text, using this for tasks like image-text matching. However, this covers only a subset of real-world interactions. Novel interactions, such as sarcasm expressed through opposing spoken words and gestures or humor expressed through utterances and tone of voice, remain challenging. In this paper, we introduce an approach to enhance multimodal models, which we call Multimodal Mixtures of Experts (MMoE). The key idea in MMoE is to train separate expert models for each type of multimodal interaction, such as redundancy present in both modalities, uniqueness in one modality, or synergy that emerges when both modalities are fused. On a sarcasm detection task (MUStARD) and a humor detection task (URFUNNY), we obtain new state-of-the-art results. MMoE is also able to be applied to various types of models to gain improvement.