Causal inference from observational data is receiving wide applications in many fields. However, unidentifiable situations, where causal effects cannot be uniquely computed from observational data, pose critical barriers to applying causal inference to complicated real applications. In this paper, we develop a bounding method for estimating the average causal effect (ACE) under unidentifiable situations due to hidden confounding based on Pearl's structural causal model. We propose to parameterize the unknown exogenous random variables and structural equations of a causal model using neural networks and implicit generative models. Then, using an adversarial learning framework, we search the parameter space to explicitly traverse causal model...
We present the Structural Agnostic Model (SAM), a framework to estimate end-to-end non-acyclic causa...
Causal effect estimation is important for numerous tasks in the natural and social sciences. However...
AbstractThe task of estimating causal effects from non-experimental data is notoriously difficult an...
Learning causal effects from observational data greatly benefits a variety of domains such as health...
International audienceWe introduce a new approach to functional causal modeling from observational d...
Although understanding and characterizing causal effects have become essential in observational stud...
The inference of causal relationships using observational data from partially observed multivariate ...
Estimating the effect of an intervention while accounting for confounding variables is a key task in...
Causal treatment effect estimation is a key problem that arises in a variety ofreal-world settings, ...
The estimation of causal effects is fundamental in situations where the underlying system will be su...
Estimating causal effects from observational network data is a significant but challenging problem. ...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
International audienceA new causal discovery method, Structural Agnostic Modeling (SAM), is presente...
Learning individual-level causal effects from observational data, such as inferring the most effecti...
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
We present the Structural Agnostic Model (SAM), a framework to estimate end-to-end non-acyclic causa...
Causal effect estimation is important for numerous tasks in the natural and social sciences. However...
AbstractThe task of estimating causal effects from non-experimental data is notoriously difficult an...
Learning causal effects from observational data greatly benefits a variety of domains such as health...
International audienceWe introduce a new approach to functional causal modeling from observational d...
Although understanding and characterizing causal effects have become essential in observational stud...
The inference of causal relationships using observational data from partially observed multivariate ...
Estimating the effect of an intervention while accounting for confounding variables is a key task in...
Causal treatment effect estimation is a key problem that arises in a variety ofreal-world settings, ...
The estimation of causal effects is fundamental in situations where the underlying system will be su...
Estimating causal effects from observational network data is a significant but challenging problem. ...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
International audienceA new causal discovery method, Structural Agnostic Modeling (SAM), is presente...
Learning individual-level causal effects from observational data, such as inferring the most effecti...
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
We present the Structural Agnostic Model (SAM), a framework to estimate end-to-end non-acyclic causa...
Causal effect estimation is important for numerous tasks in the natural and social sciences. However...
AbstractThe task of estimating causal effects from non-experimental data is notoriously difficult an...