The problem of causal inference is to determine if a given probability distribution on observed variables is compatible with some causal structure. The difficult case is when the causal structure includes latent variables. We here introduce the inflation technique for tackling this problem. An inflation of a causal structure is a new causal structure that can contain multiple copies of each of the original variables, but where the ancestry of each copy mirrors that of the original. To every distribution of the observed variables that is compatible with the original causal structure, we assign a family of marginal distributions on certain subsets of the copies that are compatible with the inflated causal structure. It follows that compatibil...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
The causal compatibility question asks whether a given causal structure graph — possibly involving l...
Inflation is a Python package that implements inflation algorithms for causal inference. In causal i...
A causal structure is a description of the functional dependencies between random variables. A distr...
We introduce Inflation, a Python library for assessing whether an observed probability distribution ...
We provide a scheme for inferring causal relations from uncontrolled statistical data based on tools...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
The current paper develops a probabilistic theory of causation using measure-theoretical concepts an...
We investigate the possibility of distinguishing among different causal relations starting from a li...
In this work we propose a statistical approach to handling sources of theoretical uncertainty in str...
In this work we propose a statistical approach to handling sources of theoretical uncertainty in str...
We propose a new inference rule for estimating causal structure that underlies the observed statisti...
Some of the parameters we call “constants of nature” may in fact be variables related to the local v...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
The causal compatibility question asks whether a given causal structure graph — possibly involving l...
Inflation is a Python package that implements inflation algorithms for causal inference. In causal i...
A causal structure is a description of the functional dependencies between random variables. A distr...
We introduce Inflation, a Python library for assessing whether an observed probability distribution ...
We provide a scheme for inferring causal relations from uncontrolled statistical data based on tools...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
The current paper develops a probabilistic theory of causation using measure-theoretical concepts an...
We investigate the possibility of distinguishing among different causal relations starting from a li...
In this work we propose a statistical approach to handling sources of theoretical uncertainty in str...
In this work we propose a statistical approach to handling sources of theoretical uncertainty in str...
We propose a new inference rule for estimating causal structure that underlies the observed statisti...
Some of the parameters we call “constants of nature” may in fact be variables related to the local v...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...