AI RESEARCH

Novelty-based Tree-of-Thought Search for LLM Reasoning and Planning

arXiv CS.CL

ArXi:2605.06040v1 Announce Type: cross Although advances such as chain-of-thought, tree-of-thought or reinforcement learning have improved the performance of LLMs in reasoning and planning tasks, they are still brittle and have not achieved human-level performance in many domains, and often suffer from high time and token costs. Inspired by the success of width-based search in planning, we explore how the concept of novelty can be transferred to language domains and how it can improve tree-of-thought reasoning.