Symbolic System
Symbolic systems research aims to integrate the strengths of neural networks (powerful learning) and symbolic reasoning (strong cognitive abilities) to create more robust, explainable, and data-efficient AI. Current research focuses on developing neuro-symbolic architectures, including energy-based models and probabilistic graphical reasoning frameworks, that effectively combine these approaches, often leveraging large language models for knowledge representation and reasoning. This interdisciplinary field holds significant promise for advancing AI capabilities in areas like commonsense reasoning, question answering, and high-level cognitive tasks, ultimately leading to more human-like and reliable AI systems.
Papers
December 22, 2022
June 26, 2022
January 17, 2022
November 28, 2021