ENTP: Enhancing Low-Quality SFT Data via Neural-Symbolic Text Purge-Mix
Yang, Zile, Li, Ling, Di, Na, Pang, Jinlong, Zhou, Yao, Cheng, Hao, Han, Bo, Wei, Jiaheng
–arXiv.org Artificial Intelligence
Supervised Fine-Tuning (SFT) adapts pre-trained Large Language Models (LLMs) to domain-specific instructions by training on a carefully curated subset of high-quality instruction-response pairs, typically drawn from a larger dataset that often contains many low-quality or noisy samples. However, existing quality-first paradigms often overlook valuable signals in discarded low-quality data and rely on imperfect quality filters. We introduce ENTP (Enhancing low-quality SFT data via Neural-symbolic Text Purge-Mix), a framework that revitalizes low-quality corpora through symbolic purification and neural reconstruction. The symbolic module identifies and prunes noisy samples based on statistical priors, while the neural component synthesizes enriched instruction-response pairs by leveraging latent representations and model knowledge. This neural-symbolic synergy enhances data informativeness and diversity. Experiments show that ENTP-augmented datasets, constructed exclusively from low-quality data, outperform 13 established data-selection baselines across five instruction-following benchmarks, and even surpass fine-tuning on the full original dataset (approximately 300K examples). Our results highlight the untapped potential of low-quality data and underscore the importance of intelligent purification and synthesis for efficient instruction alignment.
arXiv.org Artificial Intelligence
Oct-28-2025
- Country:
- North America
- United States (0.28)
- Mexico (0.28)
- North America
- Genre:
- Research Report > New Finding (1.00)
- Technology: