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Autori principali: Dong, Qin, Tang, Yuntian, Jia, Heming, Shen, Yunhang, Jia, Bohan, Huang, Wenxuan, Zhang, Lianyue, Xie, Jiao, Lin, Shaohui, Ji, Rongrong
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.06005
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author Dong, Qin
Tang, Yuntian
Jia, Heming
Shen, Yunhang
Jia, Bohan
Huang, Wenxuan
Zhang, Lianyue
Xie, Jiao
Lin, Shaohui
Ji, Rongrong
author_facet Dong, Qin
Tang, Yuntian
Jia, Heming
Shen, Yunhang
Jia, Bohan
Huang, Wenxuan
Zhang, Lianyue
Xie, Jiao
Lin, Shaohui
Ji, Rongrong
contents Low-Rank Adaptation (LoRA) has emerged as a dominant method in Parameter-Efficient Fine-Tuning (PEFT) for large language models, which augments the transformer layer with one down-projection $A$ and one up-projection $B$. However, LoRA's reliance on a single down-projection matrix ($A$) creates a representational bottleneck, as this solitary feature extractor is inherently insufficient for capturing the diverse signals required by complex tasks. This motivates our architectural shift to focus on enriching the feature adaptation to improve the downstream task adaptation ability. We propose MASA (Multi-$A$ Shared Adaptation), an architecture that implements a multi-$A$, single-$B$ structure where the multi-$A$ expert ensemble is asymmetrically shared across layers to ensure parameter efficiency. In MASA, these specialized experts capture diverse features, which are then integrated by a single, layer-specific $B$-matrix. The effectiveness and versatility of our method are validated through a comprehensive suite of experiments spanning multi-domain generalization, single-domain specialization, and multi-task reasoning. For example, on the MMLU benchmark, MASA achieves an average accuracy of 59.62%, outperforming the standard LoRA by 1.08 points (a relative improvement of 1.84%) with comparable learnable parameters of 0.52%.
format Preprint
id arxiv_https___arxiv_org_abs_2510_06005
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MASA: Rethinking the Representational Bottleneck in LoRA with Multi-A Shared Adaptation
Dong, Qin
Tang, Yuntian
Jia, Heming
Shen, Yunhang
Jia, Bohan
Huang, Wenxuan
Zhang, Lianyue
Xie, Jiao
Lin, Shaohui
Ji, Rongrong
Computation and Language
Low-Rank Adaptation (LoRA) has emerged as a dominant method in Parameter-Efficient Fine-Tuning (PEFT) for large language models, which augments the transformer layer with one down-projection $A$ and one up-projection $B$. However, LoRA's reliance on a single down-projection matrix ($A$) creates a representational bottleneck, as this solitary feature extractor is inherently insufficient for capturing the diverse signals required by complex tasks. This motivates our architectural shift to focus on enriching the feature adaptation to improve the downstream task adaptation ability. We propose MASA (Multi-$A$ Shared Adaptation), an architecture that implements a multi-$A$, single-$B$ structure where the multi-$A$ expert ensemble is asymmetrically shared across layers to ensure parameter efficiency. In MASA, these specialized experts capture diverse features, which are then integrated by a single, layer-specific $B$-matrix. The effectiveness and versatility of our method are validated through a comprehensive suite of experiments spanning multi-domain generalization, single-domain specialization, and multi-task reasoning. For example, on the MMLU benchmark, MASA achieves an average accuracy of 59.62%, outperforming the standard LoRA by 1.08 points (a relative improvement of 1.84%) with comparable learnable parameters of 0.52%.
title MASA: Rethinking the Representational Bottleneck in LoRA with Multi-A Shared Adaptation
topic Computation and Language
url https://arxiv.org/abs/2510.06005