The postulate of independence of cause and mechanism (ICM) has recently led to several new causal discovery algorithms. The interpretation of independence and the way it is utilized, however, varies across these methods. Our aim in this paper is to propose a group theoretic framework for ICM to unify and generalize these approaches. In our setting, the cause-mechanism relationship is assessed by comparing it against a null hypothesis through the application of random generic group transformations. We show that the group theoretic view provides a very general tool to study the structure of data generating mechanisms with direct applications to machine learning
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
The present paper examines a type of abstract domain-general knowledge required for the process of c...
The postulate of independence of cause and mechanism (ICM) has recently led to several new causal di...
International audienceCausal inference methods based on conditional independence construct Markov eq...
State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. Howe...
Learning causal structure from observational data often assumes that we observe independent and iden...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
While invariance of causal mechanisms has inspired recent work in both robust machine learning and c...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
Discovering statistical representations and relations among random variables is a very important tas...
A concise and self-contained introduction to causal inference, increasingly important in data scienc...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
We present a framework for the rational analysis of elemental causal induction -- learning about the...
Methods to identify cause-effect relationships currently mostly assume the variables to be scalar ra...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
The present paper examines a type of abstract domain-general knowledge required for the process of c...
The postulate of independence of cause and mechanism (ICM) has recently led to several new causal di...
International audienceCausal inference methods based on conditional independence construct Markov eq...
State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. Howe...
Learning causal structure from observational data often assumes that we observe independent and iden...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
While invariance of causal mechanisms has inspired recent work in both robust machine learning and c...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
Discovering statistical representations and relations among random variables is a very important tas...
A concise and self-contained introduction to causal inference, increasingly important in data scienc...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
We present a framework for the rational analysis of elemental causal induction -- learning about the...
Methods to identify cause-effect relationships currently mostly assume the variables to be scalar ra...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
The present paper examines a type of abstract domain-general knowledge required for the process of c...