Bridging Causality and Machine Learning: How Do They Benefit from Each Other?

Tuesday, July 05, 2022

Modern machine learning techniques can discover complicated statistical dependencies between random variables and make use of them to perform predictions on future observations. However, many real problems involve causal inference, which aims to infer how the data generating system should behave under changing conditions. To perform causal inference, we need not only statistical dependencies but also causal structures to determine the system’s behaviour under external interventions. In this talk, I will be focusing on two essential problems that bridge causality and machine learning and investigate how they can benefit from each other. 1) Because conducting randomized controlled experiments for causal structure discovery is often expensive or infeasible, it would be valuable to investigate how we can explore modern machine learning algorithms to search for causal structures from observational data. 2) As causal structure provides information about the distribution change properties, it can be used as a fundamental tool to tackle a major challenge for machine learning: the capability of generalization to new distributions and prediction in nonstationary environment.

Speaker/s

Mingming Gong is a lecturer at the School of Mathematics and Statistics, University of Melbourne, Australia, and a principal investigator at the Melbourne Centre for Data Science. He is interested in providing theoretical foundations and computational innovations in causal structure learning from real-world complex data. Meanwhile, he explores causal principles to tackle challenges in statistical machine learning, such as transferability, robustness, and interpretability. He has authored and co-authored 50+ research papers on top venues such as ICML, NeurIPS, UAI, CVPR, etc. He has served the area chair role of top conferences such as NeurIPS, ICML, ICLR, and UAI. He received the Discovery Early Career Research Award from Australian Research Council in 2021.

Related