Bayesian Network
Bayesian networks are probabilistic graphical models used to represent and reason with uncertain information, primarily aiming to model complex relationships between variables and make predictions under uncertainty. Current research focuses on improving the scalability of Bayesian network learning algorithms for high-dimensional data, developing efficient inference methods, and integrating them with other machine learning techniques like deep learning and large language models for enhanced performance and interpretability. These advancements are impacting diverse fields, including healthcare (disease modeling, diagnosis), manufacturing (process optimization), and autonomous systems (scenario planning, anomaly detection), by providing robust and explainable models for decision-making in complex systems.
Papers
Learning noisy-OR Bayesian Networks with Max-Product Belief Propagation
Antoine Dedieu, Guangyao Zhou, Dileep George, Miguel Lazaro-Gredilla
BALANCE: Bayesian Linear Attribution for Root Cause Localization
Chaoyu Chen, Hang Yu, Zhichao Lei, Jianguo Li, Shaokang Ren, Tingkai Zhang, Silin Hu, Jianchao Wang, Wenhui Shi