We consider the use of interventions for resolving a problem of unidentified statistical models. The leading examples are from latent variable modelling, an influential statistical tool in the social sciences. We first explain the problem of statistical identifiability and contrast it with the identifiability of causal models. We then draw a parallel between the latent variable models and Bayesian networks with hidden nodes. This allows us to clarify the use of interventions for dealing with unidentified statistical models. We end by discussing the philosophical and methodological import of our result
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
The essential precondition of implementing interventionist techniques of causal reasoning is that pa...
Causal models communicate our assumptions about causes and e ects in real-world phenomena. Often the...
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 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 consider the use of intervention data for eliminating the underdeter-mination problems in statist...
Latent variable models posit that an unobserved, or latent, set of variables describe the statistica...
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...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
The essential precondition of implementing interventionist techniques of causal reasoning is that pa...
Causal models communicate our assumptions about causes and e ects in real-world phenomena. Often the...
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 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 consider the use of intervention data for eliminating the underdeter-mination problems in statist...
Latent variable models posit that an unobserved, or latent, set of variables describe the statistica...
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...
Given a set of experiments in which varying subsets of observed variables are subject to interventio...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
The essential precondition of implementing interventionist techniques of causal reasoning is that pa...
Causal models communicate our assumptions about causes and e ects in real-world phenomena. Often the...