We study one of the simplest causal prediction algorithms that uses only conditional independences estimated from purely observational data. A specific pattern of four conditional independence relations amongst a quadruple of random variables already implies that one of these variables causes another one without any confounding. As a consequence, it is possible to predict what would happen under an intervention on that variable without actually performing the intervention. Although the method is asymptotically consistent and works well in settings with only few (latent) variables, we find that its prediction accuracy can be worse than simple (inconsistent) baselines when many (latent) variables are present. Our findings illustrate that viol...
AbstractThe Markov condition describes the conditional independence relations present in a causal mo...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
An important problem in many domains is to predict how a system will respond to interventions. This ...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
Recent evaluations have indicated that in practice, general methods for prediction which do not acco...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
Recent evaluations have indicated that in practice, general methods for prediction which do not acco...
AbstractThe Markov condition describes the conditional independence relations present in a causal mo...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
Within the causal modeling literature, debates about the Causal Faithfulness Condition (CFC) have co...
Current methods of detecting causal relationships from data rely on analysing the patterns of correl...
AbstractThe Markov condition describes the conditional independence relations present in a causal mo...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
An important problem in many domains is to predict how a system will respond to interventions. This ...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
Recent evaluations have indicated that in practice, general methods for prediction which do not acco...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
Recent evaluations have indicated that in practice, general methods for prediction which do not acco...
AbstractThe Markov condition describes the conditional independence relations present in a causal mo...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
Within the causal modeling literature, debates about the Causal Faithfulness Condition (CFC) have co...
Current methods of detecting causal relationships from data rely on analysing the patterns of correl...
AbstractThe Markov condition describes the conditional independence relations present in a causal mo...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
An important problem in many domains is to predict how a system will respond to interventions. This ...