@article{kretschmer2021quantifying, author = {Kretschmer, Marlene and Adams, Samantha V. and Arribas Herranz, Alberto and Prudden, Rachel and Robinson, Niall and Saggioro, Elena and Shepherd, Theodore G.}, title = {Quantifying Causal Pathways of Teleconnections}, year = {2021}, month = {December}, abstract = {Teleconnections are sources of predictability for regional weather and climate, but the relative contributions of different teleconnections to regional anomalies are usually not understood. While physical knowledge about the involved mechanisms is often available, how to quantify a particular causal pathway from data are usually unclear. Here, we argue for adopting a causal inference-based framework in the statistical analysis of teleconnections to overcome this challenge. A causal approach requires explicitly including expert knowledge in the statistical analysis, which allows one to draw quantitative conclusions. We illustrate some of the key concepts of this theory with concrete examples of well-known atmospheric teleconnections. We further discuss the particular challenges and advantages these imply for climate science and argue that a systematic causal approach to statistical inference should become standard practice in the study of teleconnections.}, url = {http://approjects.co.za/?big=en-us/research/publication/quantifying-causal-pathways-of-teleconnections/}, pages = {E2247-E2263}, journal = {Bulletin of the American Meteorological Society}, volume = {102}, number = {12}, }