NeuroAda: Activating Each Neuron's Potential for Parameter-Efficient Fine-Tuning
Abstract
NeuroAda is a parameter-efficient fine-tuning method that combines selective adaptation with bypass connections to achieve high performance with minimal trainable parameters and reduced memory usage.
Existing parameter-efficient fine-tuning (PEFT) methods primarily fall into two categories: addition-based and selective in-situ adaptation. The former, such as LoRA, introduce additional modules to adapt the model to downstream tasks, offering strong memory efficiency. However, their representational capacity is often limited, making them less suitable for fine-grained adaptation. In contrast, the latter directly fine-tunes a carefully chosen subset of the original model parameters, allowing for more precise and effective adaptation, but at the cost of significantly increased memory consumption. To reconcile this trade-off, we propose NeuroAda, a novel PEFT method that enables fine-grained model finetuning while maintaining high memory efficiency. Our approach first identifies important parameters (i.e., connections within the network) as in selective adaptation, and then introduces bypass connections for these selected parameters. During finetuning, only the bypass connections are updated, leaving the original model parameters frozen. Empirical results on 23+ tasks spanning both natural language generation and understanding demonstrate that NeuroAda achieves state-of-the-art performance with as little as leq 0.02% trainable parameters, while reducing CUDA memory usage by up to 60%. We release our code here: https://github.com/FightingFighting/NeuroAda.git.
Community
We propose a novel parameter-efficient fine-tuning (PEFT) method that substantially reduces GPU memory consumption—a major limitation of selection-based PEFT approaches. Meanwhile, the proposed method ensures that all neurons in the neural network retain the potential to be activated, thereby enhancing the model’s adaptability to downstream tasks.
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