Guiding Mixture-of-Experts with Temporal Multimodal Interactions
- URL: http://arxiv.org/abs/2509.25678v2
- Date: Wed, 08 Oct 2025 04:21:03 GMT
- Title: Guiding Mixture-of-Experts with Temporal Multimodal Interactions
- Authors: Xing Han, Hsing-Huan Chung, Joydeep Ghosh, Paul Pu Liang, Suchi Saria,
- Abstract summary: We propose a novel framework that guides MoE routing using quantified temporal interaction.<n>A multimodal interaction-aware router learns to dispatch tokens to experts based on the nature of their interactions.
- Score: 30.728093182390364
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Mixture-of-Experts (MoE) architectures have become pivotal for large-scale multimodal models. However, their routing mechanisms typically overlook the informative, time-varying interaction dynamics between modalities. This limitation hinders expert specialization, as the model cannot explicitly leverage intrinsic modality relationships for effective reasoning. To address this, we propose a novel framework that guides MoE routing using quantified temporal interaction. A multimodal interaction-aware router learns to dispatch tokens to experts based on the nature of their interactions. This dynamic routing encourages experts to acquire generalizable interaction-processing skills rather than merely learning task-specific features. Our framework builds on a new formulation of temporal multimodal interaction dynamics, which are used to guide expert routing. We first demonstrate that these temporal multimodal interactions reveal meaningful patterns across applications, and then show how they can be leveraged to improve both the design and performance of MoE-based models. Comprehensive experiments on challenging multimodal benchmarks validate our approach, demonstrating both enhanced performance and improved interpretability.
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