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Main Authors: Ma, Xiaoyu, Chen, Hao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.14411
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author Ma, Xiaoyu
Chen, Hao
author_facet Ma, Xiaoyu
Chen, Hao
contents Multimodal learning integrates information from different modalities to enhance model performance, yet it often suffers from modality imbalance, where dominant modalities overshadow weaker ones during joint optimization. This paper reveals that such an imbalance not only occurs during representation learning but also manifests significantly at the decision layer. Experiments on audio-visual datasets (CREMAD and Kinetic-Sounds) show that even after extensive pretraining and balanced optimization, models still exhibit systematic bias toward certain modalities, such as audio. Further analysis demonstrates that this bias originates from intrinsic disparities in feature-space and decision-weight distributions rather than from optimization dynamics alone. We argue that aggregating uncalibrated modality outputs at the fusion stage leads to biased decision-layer weighting, hindering weaker modalities from contributing effectively. To address this, we propose that future multimodal systems should focus more on incorporate adaptive weight allocation mechanisms at the decision layer, enabling relative balanced according to the capabilities of each modality.
format Preprint
id arxiv_https___arxiv_org_abs_2510_14411
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Revisit Modality Imbalance at the Decision Layer
Ma, Xiaoyu
Chen, Hao
Machine Learning
Multimedia
Sound
Audio and Speech Processing
Multimodal learning integrates information from different modalities to enhance model performance, yet it often suffers from modality imbalance, where dominant modalities overshadow weaker ones during joint optimization. This paper reveals that such an imbalance not only occurs during representation learning but also manifests significantly at the decision layer. Experiments on audio-visual datasets (CREMAD and Kinetic-Sounds) show that even after extensive pretraining and balanced optimization, models still exhibit systematic bias toward certain modalities, such as audio. Further analysis demonstrates that this bias originates from intrinsic disparities in feature-space and decision-weight distributions rather than from optimization dynamics alone. We argue that aggregating uncalibrated modality outputs at the fusion stage leads to biased decision-layer weighting, hindering weaker modalities from contributing effectively. To address this, we propose that future multimodal systems should focus more on incorporate adaptive weight allocation mechanisms at the decision layer, enabling relative balanced according to the capabilities of each modality.
title Revisit Modality Imbalance at the Decision Layer
topic Machine Learning
Multimedia
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2510.14411