D’ya Like DAGs? A Survey on Structure Learning and Causal Discovery
Author(s) -
Matthew J. Vowels,
Necati Cihan Camgöz,
Richard Bowden
Publication year - 2022
Publication title -
acm computing surveys
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.079
H-Index - 163
eISSN - 1557-7341
pISSN - 0360-0300
DOI - 10.1145/3527154
Subject(s) - computer science , causal structure , data science , causality (physics) , benchmark (surveying) , focus (optics) , causal inference , causal model , knowledge extraction , artificial intelligence , econometrics , medicine , physics , geodesy , pathology , quantum mechanics , optics , economics , geography
Causal reasoning is a crucial part of science and human intelligence. In order to discover causal relationships from data, we need structure discovery methods. We provide a review of background theory and a survey of methods for structure discovery. We primarily focus on modern, continuous optimization methods, and provide reference to further resources such as benchmark datasets and software packages. Finally, we discuss the assumptive leap required to take us from structure to causality.
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