We propose a method to classify the causal relationship between two discrete variables given only the joint distribution of the variables, acknowledging that the method is subject to an inherent baseline error. We assume that the causal system is acyclicity, but we do allow for hidden common causes. Our algorithm presupposes that the probability distributions P(C) of a cause C is independent from the probability distribution P(E∣C) of the cause-effect mechanism. While our classifier is trained with a Bayesian assumption of flat hyperpriors, we do not make this assumption about our test data. This work connects to recent developments on the identifiability of causal models over continuous variables under the assumption of "independent mechan...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
We propose a method to classify the causal relationship between two discrete variables given only th...
We propose a method to classify the causal relationship between two discrete variables given only th...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Knowledge about causal relationships is important because it enables the prediction of the effects o...
Knowledge about causal relationships is important because it enables the prediction of the effects o...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We address the problem of inferring the causal direction between two variables by comparing the leas...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
We consider two variables that are related to each other by an invertible function. While it has pre...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
We propose a method to classify the causal relationship between two discrete variables given only th...
We propose a method to classify the causal relationship between two discrete variables given only th...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Knowledge about causal relationships is important because it enables the prediction of the effects o...
Knowledge about causal relationships is important because it enables the prediction of the effects o...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We address the problem of inferring the causal direction between two variables by comparing the leas...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
We consider two variables that are related to each other by an invertible function. While it has pre...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
Inferring the causal structure of a set of random variables from a finite sample of the joint distri...