Thought Reasoning
Thought reasoning in artificial intelligence focuses on enabling large language models (LLMs) to perform complex, multi-step reasoning tasks, mirroring human cognitive processes. Current research emphasizes improving the reliability and interpretability of LLM reasoning through techniques like chain-of-thought prompting, graph-based reasoning structures (e.g., Tree of Thoughts, Graph of Thoughts), and the integration of symbolic logic and code execution. These advancements are crucial for building more trustworthy and explainable AI systems, with significant implications for applications ranging from scientific discovery and medical diagnosis to improved decision-making in various fields.
Papers
Visual Sketchpad: Sketching as a Visual Chain of Thought for Multimodal Language Models
Yushi Hu, Weijia Shi, Xingyu Fu, Dan Roth, Mari Ostendorf, Luke Zettlemoyer, Noah A Smith, Ranjay Krishna
FairCoT: Enhancing Fairness in Diffusion Models via Chain of Thought Reasoning of Multimodal Language Models
Zahraa Al Sahili, Ioannis Patras, Matthew Purver