The estimation of causal effects is fundamental in situations where the underlying system will be subject to active interventions. Part of building a causal inference engine is defining how variables relate to each other, that is, defining the functional relationship between variables entailed by the graph conditional dependencies. In this article, we deviate from the common assumption of linear relationships in causal models by making use of neural autoregressive density estimators and use them to estimate causal effects within Pearl’s do-calculus framework. Using synthetic data, we show that the approach can retrieve causal effects from non-linear systems without explicitly modeling the interactions between the variables and include confi...
International audienceWe introduce a new approach to functional causal modeling from observational d...
In psychology and neuroscience, inferring causality in non-experimental studies is almost taboo, bec...
In several fields, sample data are observed at discrete instead of continuous levels. For example, i...
Causal inference from observational data is receiving wide applications in many fields. However, uni...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
Do-calculus is concerned with estimating the interventional distribution of an action from the obse...
Advances in computer science technologies have shed light on artificial neural networks (ANN). ANN s...
Observational studies aiming to estimate causal effects often rely on conceptual frameworks that are...
The objective of this paper is to present a method for the computer representation of empirically de...
AbstractThe task of estimating causal effects from non-experimental data is notoriously difficult an...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
This paper considers inference of causal structure in a class of graphical models called “conditiona...
One of the basic aims of science is to unravel the chain of cause and effect of particular systems. ...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
International audienceWe introduce a new approach to functional causal modeling from observational d...
In psychology and neuroscience, inferring causality in non-experimental studies is almost taboo, bec...
In several fields, sample data are observed at discrete instead of continuous levels. For example, i...
Causal inference from observational data is receiving wide applications in many fields. However, uni...
The inference of causal interaction structures in multivariate systems enables a deeper understandin...
Do-calculus is concerned with estimating the interventional distribution of an action from the obse...
Advances in computer science technologies have shed light on artificial neural networks (ANN). ANN s...
Observational studies aiming to estimate causal effects often rely on conceptual frameworks that are...
The objective of this paper is to present a method for the computer representation of empirically de...
AbstractThe task of estimating causal effects from non-experimental data is notoriously difficult an...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
This paper considers inference of causal structure in a class of graphical models called “conditiona...
One of the basic aims of science is to unravel the chain of cause and effect of particular systems. ...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
International audienceWe introduce a new approach to functional causal modeling from observational d...
In psychology and neuroscience, inferring causality in non-experimental studies is almost taboo, bec...
In several fields, sample data are observed at discrete instead of continuous levels. For example, i...