Many statistical problems in causal inference involve a probability distribution other than the one from which data are actually observed; as an additional complication, the object of interest is often a marginal quantity of this other probability distribution. This creates many practical complications for statistical inference, even where the problem is non-parametrically identified. In particular, it is difficult to perform likelihood-based inference, or even to simulate from the model in a general way. We introduce the `frugal parameterization', which places the causal effect of interest at its centre, and then builds the rest of the model around it. We do this in a way that provides a recipe for constructing a regular, non-redundant p...
Causal intervention is an essential tool in causal inference. It is axiomatized under the rules of d...
Many scientific and decision-making tasks require learning complex relationships between a set of c...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
The fundamental challenge of drawing causal inference is that counterfactual outcomes are not fully ...
Although review papers on causal inference methods are now available, there is a lack of introductor...
Experiments have always been the way to study what the effect is of interventions. Causal inference ...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
The method of the estimation of the probability of an event occurring under the influence of the cau...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
[Introduction] 'Causal modelling' is a general term that applies to a wide variety of formal method...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Many causal inference approaches have focused on identifying an individual's outcome change due to a...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
This paper summarizes recent advances in causal inference and underscores the paradigmatic shifts th...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
Causal intervention is an essential tool in causal inference. It is axiomatized under the rules of d...
Many scientific and decision-making tasks require learning complex relationships between a set of c...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
The fundamental challenge of drawing causal inference is that counterfactual outcomes are not fully ...
Although review papers on causal inference methods are now available, there is a lack of introductor...
Experiments have always been the way to study what the effect is of interventions. Causal inference ...
Instrumental variables have been used for a long time in the econometrics literature for the identif...
The method of the estimation of the probability of an event occurring under the influence of the cau...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
[Introduction] 'Causal modelling' is a general term that applies to a wide variety of formal method...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Many causal inference approaches have focused on identifying an individual's outcome change due to a...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
This paper summarizes recent advances in causal inference and underscores the paradigmatic shifts th...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
Causal intervention is an essential tool in causal inference. It is axiomatized under the rules of d...
Many scientific and decision-making tasks require learning complex relationships between a set of c...
This manuscript includes three topics in causal inference, all of which are under the randomization ...