LLMs can effectively select important unlabelled instructions for annotation, improving instruction tuning benchmarks.
The author introduces SELECTLLM, a framework that utilizes LLMs to select high-quality unlabelled instructions efficiently, outperforming traditional methods in instruction tuning benchmarks.