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Main Authors: Wang, Xiaohan, Cheng, Zhangtao, Zhong, Ting, Chen, Leiting, Zhou, Fan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.20258
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author Wang, Xiaohan
Cheng, Zhangtao
Zhong, Ting
Chen, Leiting
Zhou, Fan
author_facet Wang, Xiaohan
Cheng, Zhangtao
Zhong, Ting
Chen, Leiting
Zhou, Fan
contents Weight Averaging (WA) has emerged as a powerful technique for enhancing generalization by promoting convergence to a flat loss landscape, which correlates with stronger out-of-distribution performance. However, applying WA directly to multi-modal domain generalization (MMDG) is challenging: differences in optimization speed across modalities lead WA to overfit to faster-converging ones in early stages, suppressing the contribution of slower yet complementary modalities, thereby hindering effective modality fusion and skewing the loss surface toward sharper, less generalizable minima. To address this issue, we propose MBCD, a unified collaborative distillation framework that retains WA's flatness-inducing advantages while overcoming its shortcomings in multi-modal contexts. MBCD begins with adaptive modality dropout in the student model to curb early-stage bias toward dominant modalities. A gradient consistency constraint then aligns learning signals between uni-modal branches and the fused representation, encouraging coordinated and smoother optimization. Finally, a WA-based teacher conducts cross-modal distillation by transferring fused knowledge to each uni-modal branch, which strengthens cross-modal interactions and steer convergence toward flatter solutions. Extensive experiments on MMDG benchmarks show that MBCD consistently outperforms existing methods, achieving superior accuracy and robustness across diverse unseen domains.
format Preprint
id arxiv_https___arxiv_org_abs_2511_20258
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Modality-Balanced Collaborative Distillation for Multi-Modal Domain Generalization
Wang, Xiaohan
Cheng, Zhangtao
Zhong, Ting
Chen, Leiting
Zhou, Fan
Computer Vision and Pattern Recognition
Machine Learning
Weight Averaging (WA) has emerged as a powerful technique for enhancing generalization by promoting convergence to a flat loss landscape, which correlates with stronger out-of-distribution performance. However, applying WA directly to multi-modal domain generalization (MMDG) is challenging: differences in optimization speed across modalities lead WA to overfit to faster-converging ones in early stages, suppressing the contribution of slower yet complementary modalities, thereby hindering effective modality fusion and skewing the loss surface toward sharper, less generalizable minima. To address this issue, we propose MBCD, a unified collaborative distillation framework that retains WA's flatness-inducing advantages while overcoming its shortcomings in multi-modal contexts. MBCD begins with adaptive modality dropout in the student model to curb early-stage bias toward dominant modalities. A gradient consistency constraint then aligns learning signals between uni-modal branches and the fused representation, encouraging coordinated and smoother optimization. Finally, a WA-based teacher conducts cross-modal distillation by transferring fused knowledge to each uni-modal branch, which strengthens cross-modal interactions and steer convergence toward flatter solutions. Extensive experiments on MMDG benchmarks show that MBCD consistently outperforms existing methods, achieving superior accuracy and robustness across diverse unseen domains.
title Modality-Balanced Collaborative Distillation for Multi-Modal Domain Generalization
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2511.20258