Symbolic Knowledge

Symbolic knowledge research aims to integrate the structured, interpretable nature of symbolic representations with the learning power of neural networks, bridging the gap between sub-symbolic and symbolic AI. Current efforts focus on developing neuro-symbolic models that leverage knowledge graphs and logical reasoning, often employing techniques like knowledge graph embeddings, neural-symbolic prompting, and knowledge compilation to enhance reasoning, explainability, and efficiency in tasks ranging from question answering to robotic control. This interdisciplinary field holds significant promise for advancing AI safety, interpretability, and the development of more robust and trustworthy AI systems across various applications.

Papers