MCE: Towards a General Framework for Handling Missing Modalities under Imbalanced Missing Rates
Abstract
Multi-modal learning has made significant advances across diverse pattern recognition applications. However, handling missing modalities, especially under imbalanced missing rates, remains a major challenge. This imbalance triggers a vicious cycle: modalities with higher missing rates receive fewer updates, leading to inconsistent learning progress and representational degradation that further diminishes their contribution. Existing methods typically focus on global dataset-level balancing, often overlooking critical sample-level variations in modality utility and the underlying issue of degraded feature quality. We propose Modality Capability Enhancement (MCE) to tackle these limitations. MCE includes two synergistic components: i) Learning Capability Enhancement (LCE), which introduces multi-level factors to dynamically balance modality-specific learning progress, and ii) Representation Capability Enhancement (RCE), which improves feature semantics and robustness through subset prediction and cross-modal completion tasks. Comprehensive evaluations on four multi-modal benchmarks show that MCE consistently outperforms state-of-the-art methods under various missing configurations. The final published version is now available at https://doi.org/10.1016/j.patcog.2025.112591. Our code is available at https://github.com/byzhaoAI/MCE.
Cite
@article{arxiv.2510.10534,
title = {MCE: Towards a General Framework for Handling Missing Modalities under Imbalanced Missing Rates},
author = {Binyu Zhao and Wei Zhang and Zhaonian Zou},
journal= {arXiv preprint arXiv:2510.10534},
year = {2025}
}
Comments
This is the accepted version of an article that has been published in \textbf{Pattern Recognition}. The final version is available via the DOI, or for 50 days' free access via this Share Link: https://authors.elsevier.com/a/1m40D77nKsBm- (valid until December 28, 2025)