CVAICLJul 1, 2025

Gated Recursive Fusion: A Stateful Approach to Scalable Multimodal Transformers

arXiv:2507.02985v13 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the computational bottleneck in multimodal learning for applications with many modalities, offering an incremental improvement in efficiency.

The paper tackled the challenge of balancing deep multimodal fusion with computational scalability by introducing Gated Recurrent Fusion (GRF), a stateful, recurrent architecture that achieves competitive performance on the CMU-MOSI benchmark while scaling linearly with the number of modalities.

Multimodal learning faces a fundamental tension between deep, fine-grained fusion and computational scalability. While cross-attention models achieve strong performance through exhaustive pairwise fusion, their quadratic complexity is prohibitive for settings with many modalities. We address this challenge with Gated Recurrent Fusion (GRF), a novel architecture that captures the power of cross-modal attention within a linearly scalable, recurrent pipeline. Our method processes modalities sequentially, updating an evolving multimodal context vector at each step. The core of our approach is a fusion block built on Transformer Decoder layers that performs symmetric cross-attention, mutually enriching the shared context and the incoming modality. This enriched information is then integrated via a Gated Fusion Unit (GFU) a GRU-inspired mechanism that dynamically arbitrates information flow, enabling the model to selectively retain or discard features. This stateful, recurrent design scales linearly with the number of modalities, O(n), making it ideal for high-modality environments. Experiments on the CMU-MOSI benchmark demonstrate that GRF achieves competitive performance compared to more complex baselines. Visualizations of the embedding space further illustrate that GRF creates structured, class-separable representations through its progressive fusion mechanism. Our work presents a robust and efficient paradigm for powerful, scalable multimodal representation learning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes