Section 01
[Introduction] GPS Framework: A Graph-Guided Approach to Enabling Large Models to Ask Proactively
GPS (Graph-guided Proactive Information Seeking) is an innovative training framework proposed by research teams from institutions including Peking University. It uses graph structures to guide large language models to proactively seek information, addressing the information gap problem problem in complex question-answering tasks. This work has been accepted by ICLR 2026. Its core lies in using graphs to model information dependency relationships and reinforcement learning to optimize proactive information-seeking strategies, enabling models to shift from passive answering to active collaboration, thereby improving the accuracy and reliability of question-answering in complex scenarios.