Given a set of experiments in which varying subsets of observed variables are subject to intervention, we consider the problem of identifiability of causal models exhibiting latent confounding. While identifiability is trivial when each experiment intervenes on a large number of variables, the situation is more complicated when only one or a few variables are subject to intervention per experiment. For linear causal models with latent variables Hyttinen et al. (2010) gave precise conditions for when such data are sufficient to identify the full model. While their result cannot be extended to discrete-valued variables with arbitrary cause-effect relationships, we show that a similar result can be obtained for the class of causal models whose...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We consider the sensitivity of causal identification to small perturbations in the input. A long li...
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...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
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...
We propose a method to classify the causal relationship between two discrete variables given only th...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We focus on causal discovery in the presence of measurement error in linear systems where the mixing...
We establish conditions under which latent causal graphs are nonparametrically identifiable and can ...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We consider the sensitivity of causal identification to small perturbations in the input. A long li...
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...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
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...
We propose a method to classify the causal relationship between two discrete variables given only th...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We focus on causal discovery in the presence of measurement error in linear systems where the mixing...
We establish conditions under which latent causal graphs are nonparametrically identifiable and can ...
We propose a method for inferring the existence of a latent common cause ("confounder") of two obser...
We consider the use of interventions for resolving a problem of unidentified statistical models. The...
We consider the sensitivity of causal identification to small perturbations in the input. A long li...