D$^2$Plan: Dual-Agent Dynamic Global Planning for Complex Retrieval-Augmented Reasoning
PositiveArtificial Intelligence
- The recent introduction of D$^2$Plan, a Dual-Agent Dynamic Global Planning paradigm, aims to enhance complex retrieval-augmented reasoning in large language models (LLMs). This framework addresses critical challenges such as ineffective search chain construction and reasoning hijacking by irrelevant evidence, through the collaboration of a Reasoner and a Purifier.
- By improving the accuracy and relevance of information retrieval, D$^2$Plan is poised to significantly enhance the performance of LLMs in multi-hop reasoning tasks, potentially leading to more reliable AI applications in various fields.
- This development reflects a growing trend in AI research focused on refining reasoning capabilities of LLMs, as seen in other frameworks like Saturn and SwiReasoning, which also seek to overcome limitations in existing reinforcement learning methods and improve strategic reasoning through innovative approaches.
— via World Pulse Now AI Editorial System

