Simple RULE
Research on "rules" in artificial intelligence focuses on developing and utilizing rule-based systems for various tasks, ranging from knowledge representation and reasoning to decision-making and model explainability. Current research emphasizes improving the efficiency and accuracy of rule induction algorithms, integrating rules with machine learning models (e.g., using rule-based systems to enhance the robustness of deep learning models), and developing methods for evaluating and verifying rule-following capabilities in large language models. This work is significant because it addresses the need for more transparent, interpretable, and robust AI systems, with applications in diverse fields including healthcare, finance, and autonomous systems.
Papers
NLP4PBM: A Systematic Review on Process Extraction using Natural Language Processing with Rule-based, Machine and Deep Learning Methods
William Van Woensel, Soroor Motie
RNR: Teaching Large Language Models to Follow Roles and Rules
Kuan Wang, Alexander Bukharin, Haoming Jiang, Qingyu Yin, Zhengyang Wang, Tuo Zhao, Jingbo Shang, Chao Zhang, Bing Yin, Xian Li, Jianshu Chen, Shiyang Li