CLLGAug 24, 2025

DropLoRA: Sparse Low-Rank Adaptation for Parameter-Efficient Fine-Tuning

arXiv:2508.17337v13 citationsh-index: 1Has Code
Originality Incremental advance
AI Analysis

This work addresses a bottleneck in efficient fine-tuning for large language models, offering an incremental improvement with practical benefits.

The paper tackles the performance gap in LoRA-based parameter-efficient fine-tuning by introducing DropLoRA, a pruning-based method that dynamically adapts the learning subspace, resulting in consistent outperformance over LoRA across various large language model tasks.

LoRA-based large model parameter-efficient fine-tuning (PEFT) methods use low-rank de- composition to approximate updates to model parameters. However, compared to full- parameter fine-tuning, low-rank updates often lead to a performance gap in downstream tasks. To address this, we introduce DropLoRA, a novel pruning-based approach that focuses on pruning the rank dimension. Unlike conven- tional methods that attempt to overcome the low-rank bottleneck, DropLoRA innovatively integrates a pruning module between the two low-rank matrices in LoRA to simulate dy- namic subspace learning. This dynamic low- rank subspace learning allows DropLoRA to overcome the limitations of traditional LoRA, which operates within a static subspace. By continuously adapting the learning subspace, DropLoRA significantly boosts performance without incurring additional training or infer- ence costs. Our experimental results demon- strate that DropLoRA consistently outperforms LoRA in fine-tuning the LLaMA series across a wide range of large language model gener- ation tasks, including commonsense reason- ing, mathematical reasoning, code generation, and instruction-following. Our code is avail- able at https://github.com/TayeeChang/DropLoRA.

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