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Main Authors: Gu, Hao, Luo, Mao-Lin, Zhou, Zi-Hao, Zhang, Han-Chen, Zhang, Min-Ling, Wei, Tong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.00722
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author Gu, Hao
Luo, Mao-Lin
Zhou, Zi-Hao
Zhang, Han-Chen
Zhang, Min-Ling
Wei, Tong
author_facet Gu, Hao
Luo, Mao-Lin
Zhou, Zi-Hao
Zhang, Han-Chen
Zhang, Min-Ling
Wei, Tong
contents Parameter-efficient continual learning aims to adapt pre-trained models to sequential tasks without forgetting previously acquired knowledge. Most existing approaches treat continual learning as avoiding interference with past updates, rather than considering what properties make the current task-specific update naturally preserve previously acquired knowledge. From a knowledge-decomposition perspective, we observe that low-rank adaptations exhibit highly imbalanced singular value spectra: a few dominant components absorb most of the adaptation energy, thereby (i) more likely to disrupt previously acquired knowledge and (ii) making the update more vulnerable to interference from subsequent tasks. To enable explicit balance among components, we decouple the magnitude of the task update from its directional structure and formulate it as a constrained optimization problem on a restricted Stiefel manifold. We address this problem using a projected first-order method compatible with standard deep-learning optimizers used in vision-language models. Our method mitigates both backward and forward forgetting, consistently outperforming continual learning baselines. The implementation code is available at https://github.com/haodotgu/EBLoRA.
format Preprint
id arxiv_https___arxiv_org_abs_2602_00722
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Spectral Imbalance Causes Forgetting in Low-Rank Continual Adaptation
Gu, Hao
Luo, Mao-Lin
Zhou, Zi-Hao
Zhang, Han-Chen
Zhang, Min-Ling
Wei, Tong
Machine Learning
Parameter-efficient continual learning aims to adapt pre-trained models to sequential tasks without forgetting previously acquired knowledge. Most existing approaches treat continual learning as avoiding interference with past updates, rather than considering what properties make the current task-specific update naturally preserve previously acquired knowledge. From a knowledge-decomposition perspective, we observe that low-rank adaptations exhibit highly imbalanced singular value spectra: a few dominant components absorb most of the adaptation energy, thereby (i) more likely to disrupt previously acquired knowledge and (ii) making the update more vulnerable to interference from subsequent tasks. To enable explicit balance among components, we decouple the magnitude of the task update from its directional structure and formulate it as a constrained optimization problem on a restricted Stiefel manifold. We address this problem using a projected first-order method compatible with standard deep-learning optimizers used in vision-language models. Our method mitigates both backward and forward forgetting, consistently outperforming continual learning baselines. The implementation code is available at https://github.com/haodotgu/EBLoRA.
title Spectral Imbalance Causes Forgetting in Low-Rank Continual Adaptation
topic Machine Learning
url https://arxiv.org/abs/2602.00722