To determine causal relationships between two variables, approaches based on Functional Causal Models (FCMs) have been proposed by properly restricting model classes; however, the performance is sensitive to the model assumptions, which makes it difficult to use. In this paper, we provide a novel dynamical-system view of FCMs and propose a new framework for identifying causal direction in the bivariate case. We first show the connection between FCMs and optimal transport, and then study optimal transport under the constraints of FCMs. Furthermore, by exploiting the dynamical interpretation of optimal transport under the FCM constraints, we determine the corresponding underlying dynamical process of the static cause-effect pair data. It prov...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
The discovery of causal relationships from purely observational data is a fundamental problem in sci...
Treatment effect estimation helps answer questions, such as whether a specific treatment affects the...
To determine causal relationships between two variables, approaches based on Functional Causal Model...
To determine causal relationships between two variables, approaches based on Functional Causal Model...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
Compared to constraint-based causal discovery, causal discovery based on functional causal models is...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
Recently, several philosophical and computational approaches to causality have used an interventioni...
Recently, several philosophical and computational approaches to causality have used an interventioni...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
Treatment effect estimation helps answer questions, such as whether a specific treatment affects the...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
The discovery of causal relationships from purely observational data is a fundamental problem in sci...
Treatment effect estimation helps answer questions, such as whether a specific treatment affects the...
To determine causal relationships between two variables, approaches based on Functional Causal Model...
To determine causal relationships between two variables, approaches based on Functional Causal Model...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
International audienceFinding the causal direction in the cause-effect pair problem has been address...
Compared to constraint-based causal discovery, causal discovery based on functional causal models is...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
Recently, several philosophical and computational approaches to causality have used an interventioni...
Recently, several philosophical and computational approaches to causality have used an interventioni...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
Treatment effect estimation helps answer questions, such as whether a specific treatment affects the...
The discovery of causal relationships between a set of observed variables is a fundamental problem i...
The discovery of causal relationships from purely observational data is a fundamental problem in sci...
Treatment effect estimation helps answer questions, such as whether a specific treatment affects the...