Granger Causality
Granger causality is a statistical method used to infer directional relationships between time series, aiming to determine if one variable's past values help predict another's future. Current research focuses on extending Granger causality to handle nonlinear systems and high-dimensional data, employing diverse approaches such as neural networks (including recurrent and transformer architectures), Bayesian methods, and variations of Hawkes processes. These advancements are improving causal inference in complex domains like climate science, neuroscience, finance, and industrial process optimization, leading to more accurate predictions and a deeper understanding of system dynamics.
Papers
Learning Granger Causality from Instance-wise Self-attentive Hawkes Processes
Dongxia Wu, Tsuyoshi Idé, Aurélie Lozano, Georgios Kollias, Jiří Navrátil, Naoki Abe, Yi-An Ma, Rose Yu
Bayesian Vector AutoRegression with Factorised Granger-Causal Graphs
He Zhao, Vassili Kitsios, Terence J. O'Kane, Edwin V. Bonilla