DS1 spectrogram: Accurate and Efficient Low-Rank Model Merging in Core Space

Accurate and Efficient Low-Rank Model Merging in Core Space

September 22, 20252509.17786

Authors

Daniel Marczak,Simone Magistri,Angelo Porrello,Bartłomiej Twardowski,Andrew D. Bagdanov

Abstract

In this paper, we address the challenges associated with merging low-rank adaptations of large neural networks. With the rise of parameter-efficient adaptation techniques, such as Low-Rank Adaptation (LoRA), model fine-tuning has become more accessible.

While fine-tuning models with LoRA is highly efficient, existing merging methods often sacrifice this efficiency by merging fully-sized weight matrices. We propose the Core Space merging framework, which enables the merging of LoRA-adapted models within a common alignment basis, thereby preserving the efficiency of low-rank adaptation while substantially improving accuracy across tasks.

We further provide a formal proof that projection into Core Space ensures no loss of information and provide a complexity analysis showing the efficiency gains. Extensive empirical results demonstrate that Core Space significantly improves existing merging techniques and achieves state-of-the-art results on both vision and language tasks while utilizing a fraction of the computational resources.

Codebase is available at https://github.com/apanariello4/core-space-merging.

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