TAG-INSTRUCT: Controlled Instruction Complexity Enhancement through Structure-based Augmentation
Zhu, He, Ruan, Zhiwen, Su, Junyou, He, Xingwei, Chen, Yun, Zhang, Wenjia, Chen, Guanhua
–arXiv.org Artificial Intelligence
High-quality instruction data is crucial for developing large language models (LLMs), yet existing approaches struggle to effectively control instruction complexity. We present TAG-INSTRUCT, a novel framework that enhances instruction complexity through structured semantic compression and controlled difficulty augmentation. Unlike previous prompt-based methods operating on raw text, TAG-INSTRUCT compresses instructions into a compact tag space and systematically enhances complexity through RL-guided tag expansion. Through extensive experiments, we show that TAG-INSTRUCT outperforms existing instruction complexity augmentation approaches. Our analysis reveals that operating in tag space provides superior controllability and stability across different instruction synthesis frameworks.
arXiv.org Artificial Intelligence
Jun-3-2025
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