Logic Based

Logic-based approaches in artificial intelligence aim to enhance the reasoning capabilities of machine learning models, particularly addressing issues like factual inaccuracies and lack of transparency in large language models (LLMs). Current research focuses on developing and evaluating logic-based explanation methods, including symbolic chain-of-thought prompting, and integrating symbolic reasoning with neural networks (e.g., graph neural networks) to improve model interpretability and reliability. This work is significant because it strives to create more trustworthy and understandable AI systems, impacting fields ranging from healthcare and finance to natural language processing and knowledge representation.

Papers