CLMMNov 8, 2025

ReMoD: Rethinking Modality Contribution in Multimodal Stance Detection via Dual Reasoning

arXiv:2511.06057v11 citationsh-index: 10
Originality Highly original
AI Analysis

This work addresses stance misunderstanding in social media analysis for public opinion understanding, representing a novel method for a known bottleneck.

The paper tackles the problem of multimodal stance detection by addressing the varying contributions of different modalities, proposing ReMoD to dynamically weight modality contributions based on expressive power, resulting in significant performance improvements on the MMSD benchmark.

Multimodal Stance Detection (MSD) is a crucial task for understanding public opinion on social media. Existing work simply fuses information from various modalities to learn stance representations, overlooking the varying contributions of stance expression from different modalities. Therefore, stance misunderstanding noises may be drawn into the stance learning process due to the risk of learning errors by rough modality combination. To address this, we get inspiration from the dual-process theory of human cognition and propose **ReMoD**, a framework that **Re**thinks **Mo**dality contribution of stance expression through a **D**ual-reasoning paradigm. ReMoD integrates *experience-driven intuitive reasoning* to capture initial stance cues with *deliberate reflective reasoning* to adjust for modality biases, refine stance judgments, and thereby dynamically weight modality contributions based on their actual expressive power for the target stance. Specifically, the intuitive stage queries the Modality Experience Pool (MEP) and Semantic Experience Pool (SEP) to form an initial stance hypothesis, prioritizing historically impactful modalities. This hypothesis is then refined in the reflective stage via two reasoning chains: Modality-CoT updates MEP with adaptive fusion strategies to amplify relevant modalities, while Semantic-CoT refines SEP with deeper contextual insights of stance semantics. These dual experience structures are continuously refined during training and recalled at inference to guide robust and context-aware stance decisions. Extensive experiments on the public MMSD benchmark demonstrate that our ReMoD significantly outperforms most baseline models and exhibits strong generalization capabilities.

Foundations

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

Your Notes