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Hauptverfasser: Ma, Xiaoyu, Zhang, Weijie, Gao, Yuanhao, Miao, Han, Deng, Yongjian, Chen, Hao
Format: Preprint
Veröffentlicht: 2026
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2605.28869
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author Ma, Xiaoyu
Zhang, Weijie
Gao, Yuanhao
Miao, Han
Deng, Yongjian
Chen, Hao
author_facet Ma, Xiaoyu
Zhang, Weijie
Gao, Yuanhao
Miao, Han
Deng, Yongjian
Chen, Hao
contents Multimodal learning often suffers from modality imbalance, where modalities that converge faster dominate optimization while others remain undertrained. Existing approaches typically mitigate this issue by strengthening the weak modality or adjusting optimization gradients. However, such strategies mainly compensate for optimization rate discrepancies, often at the expense of the strong modality's optimization capacity, without analyzing how these discrepancies arise at the modality level. Based on theoretical insights and empirical observations, we argue that the discrepancy of learning pace arises from differences in the mapping difficulty between modality-specific feature space and the shared label space. To address this issue, we propose Balanced Multimodal Label Reshaping (BMLR), the first method that promotes multimodal balance from the label-side design. BMLR reshapes the cross-modal label space to equalize mapping difficulty across modalities, thereby facilitating modality interaction and injecting richer inter-class information into each modality. Extensive experiments across multiple architectures demonstrate that BMLR consistently improves multimodal performance and exhibits strong compatibility with diverse model designs. The source code will be released soon.
format Preprint
id arxiv_https___arxiv_org_abs_2605_28869
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Balancing Multimodal Learning through Label Space Reshaping
Ma, Xiaoyu
Zhang, Weijie
Gao, Yuanhao
Miao, Han
Deng, Yongjian
Chen, Hao
Machine Learning
Artificial Intelligence
Multimodal learning often suffers from modality imbalance, where modalities that converge faster dominate optimization while others remain undertrained. Existing approaches typically mitigate this issue by strengthening the weak modality or adjusting optimization gradients. However, such strategies mainly compensate for optimization rate discrepancies, often at the expense of the strong modality's optimization capacity, without analyzing how these discrepancies arise at the modality level. Based on theoretical insights and empirical observations, we argue that the discrepancy of learning pace arises from differences in the mapping difficulty between modality-specific feature space and the shared label space. To address this issue, we propose Balanced Multimodal Label Reshaping (BMLR), the first method that promotes multimodal balance from the label-side design. BMLR reshapes the cross-modal label space to equalize mapping difficulty across modalities, thereby facilitating modality interaction and injecting richer inter-class information into each modality. Extensive experiments across multiple architectures demonstrate that BMLR consistently improves multimodal performance and exhibits strong compatibility with diverse model designs. The source code will be released soon.
title Balancing Multimodal Learning through Label Space Reshaping
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.28869