000344399 001__ 344399
000344399 005__ 20230827173500.0
000344399 0247_ $$2CORDIS$$aG:(EU-Grant)101103017$$d101103017
000344399 0247_ $$2CORDIS$$aG:(EU-Call)HORIZON-MSCA-2022-PF-01$$dHORIZON-MSCA-2022-PF-01
000344399 0247_ $$2originalID$$acorda_____he::101103017
000344399 035__ $$aG:(EU-Grant)101103017
000344399 150__ $$aRobust Causal Discovery$$y2023-06-01 - 2025-05-31
000344399 372__ $$aHORIZON-MSCA-2022-PF-01$$s2023-06-01$$t2025-05-31
000344399 450__ $$aROCDISCO$$wd$$y2023-06-01 - 2025-05-31
000344399 5101_ $$0I:(DE-588b)5098525-5$$2CORDIS$$aEuropean Union
000344399 680__ $$aRObust Causal DISCOvery

Due to technological advances, the available amount of data has increased tremendously over the last decade. The fields of data science, statistics, computer science and econometrics have followed this growth as they provide indispensable tools for translating data into insights and knowledge. Where data science was traditionally concerned with learning associations in data, it has recently become clear that causal relations often provide a deeper understanding and a stronger tool in many practical applications. This has led to the flourishing of causal inference with some of the most prestigious scientific awards going to pioneers in the field over the last decade. 

“Can we learn causal mechanisms from observational data?” is one of the compelling questions that is occupying scientists all over the world. Where it was originally answered by skepticism, it has become clear that we are not completely powerless and there are indeed ways to infer causal structure from observational data under the right conditions. However, all of the current methods assume that the observed data perfectly follows the underlying causal structure. Unfortunately, real world data is often contaminated by anomalies and measurement errors, violating this assumption and thus weakening the reliability of methods for causal discovery. 

This proposal aims to fill this gap by developing methods for causal discovery that remain efficient and reliable under data contamination. In particular, it (i) builds a theoretical framework for robust causal discovery, (ii) develops methods for causal discovery that are provably robust and correctly identify the causal structure and (iii) investigates the effect of contamination on real-world discovery tasks. As a result, in addition to advancing the theoretical understanding of causal discovery, this proposal builds a versatile toolbox to support scientists doing causal discovery and improve the reliability of their findings.
000344399 909CO $$ooai:juser.fz-juelich.de:1013759$$pauthority:GRANT$$pauthority
000344399 909CO $$ooai:juser.fz-juelich.de:1013759
000344399 980__ $$aG
000344399 980__ $$aCORDIS
000344399 980__ $$aAUTHORITY