Neuron-Aware Data Selection In Instruction Tuning For Large Language Models
arXiv cs.CL / 3/16/2026
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Key Points
- NAIT is a neuron-activation-aware framework that selects high-quality instruction tuning data for LLMs by evaluating the similarity between candidate samples and target domain activation features.
- It builds reusable neuron activation features from in-domain datasets and uses them to score IT samples without relying on external models or uncertainty-based metrics.
- Experiments on Alpaca-GPT4 IT data show that training on the top 10% subset chosen by NAIT consistently outperforms methods using external models or uncertainty-based selection across multiple tasks.
- The results indicate that neuron activation features transfer across capabilities, with a stable core subset broadly boosting fundamental model abilities and enabling transfer to diverse tasks.
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