Section 01
[Introduction] Semantic Loss Fine-Tuning: A New Method to Prevent Collapse in Causal Reasoning Models
This article introduces an innovative method called "Semantic Loss Fine-Tuning", which effectively prevents large language models from experiencing model collapse in causal reasoning tasks and improves the stability and accuracy of reasoning by adding semantic constraints to traditional training losses. The method has shown significant improvements in stability, generalization ability, and interpretability in experiments, with broad application prospects in medical decision support, policy effect evaluation, and other fields.