Reasoning Path
Reasoning paths in large language models (LLMs) represent the sequence of steps a model takes to solve a problem, mirroring human thought processes. Current research focuses on improving the quality and efficiency of these paths through techniques like multi-agent systems, tree-based search algorithms (e.g., Tree of Thoughts), and methods that dynamically adjust the reasoning process based on task complexity and model confidence. This work is significant because enhanced reasoning paths lead to more accurate, reliable, and efficient LLM performance across diverse applications, from question answering and knowledge graph reasoning to complex problem-solving in robotics and other domains.
Papers
Just Ask One More Time! Self-Agreement Improves Reasoning of Language Models in (Almost) All Scenarios
Lei Lin, Jiayi Fu, Pengli Liu, Qingyang Li, Yan Gong, Junchen Wan, Fuzheng Zhang, Zhongyuan Wang, Di Zhang, Kun Gai
Empowering Multi-step Reasoning across Languages via Tree-of-Thoughts
Leonardo Ranaldi, Giulia Pucci, Federico Ranaldi, Elena Sofia Ruzzetti, Fabio Massimo Zanzotto