LGCLFeb 12, 2024

LoRA-drop: Efficient LoRA Parameter Pruning based on Output Evaluation

arXiv:2402.07721v239 citationsh-index: 14
Originality Incremental advance
AI Analysis

This work addresses efficiency issues in fine-tuning large models for NLP tasks, offering a domain-specific incremental improvement.

The paper tackles the resource consumption challenge in Low-Rank Adaptation (LoRA) fine-tuning by proposing LoRA-drop, which prunes LoRA parameters based on output evaluation, achieving performance comparable to full fine-tuning and LoRA while retaining 50% of LoRA parameters on average.

Low-Rank Adaptation (LoRA) is currently the most commonly used Parameter-efficient fine-tuning (PEFT) method, it introduces auxiliary parameters for each layer to fine-tune the pre-trained model under limited computing resources. However, it still faces resource consumption challenges during training when scaling up to larger models. Most previous studies have tackled this issue by using pruning techniques, which involve removing LoRA parameters deemed unimportant. Nonetheless, these efforts only analyze LoRA parameter features to evaluate their importance, such as parameter count, size, and gradient. In fact, the output of LoRA (product of LoRA parameter and hidden state), directly impacts the final results. Preliminary experiments indicate that a fraction of LoRA elements possesses significantly high output values, substantially influencing the layer output. Motivated by the observation, we propose LoRA-drop. Concretely, LoRA-drop evaluates the importance of LoRA based on the LoRA output. Then we retain LoRA for important layers and the other layers share the same LoRA. We conduct abundant experiments with models of different scales on NLU and NLG tasks. Results demonstrate that LoRA-drop can achieve performance comparable to full fine-tuning and LoRA, while retaining 50\% of the LoRA parameters on average.

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