AIBullisharXiv – CS AI · 18h ago6/10
🧠
Large Language Models for Imbalanced Classification: Diversity makes the difference
Researchers have developed a novel LLM-based oversampling method to address imbalanced classification in machine learning, focusing on generating diverse synthetic minority samples. The approach outperforms existing methods like SMOTE by preserving categorical information and introducing enhanced diversity through novel sampling and fine-tuning strategies.