Conditional independence (CI) testing is an important tool in causal discovery. Generally, by using CI tests, a set of Markov equivalence classes w.r.t. the observed data can be estimated by checking whether each pair of variables x and y is d-separated, given a set of variables Z. Due to the curse of dimensionality, CI testing is often difficult to return a reliable result for high-dimensional Z. In this paper, we propose a regression-based CI test to relax the test of x ⊥ y|Z to simpler unconditional independence tests of x − f(Z) ⊥ y−g(Z), and x−f(Z) ⊥ Z or y−g(Z) ⊥ Z under the assumption that the data-generating procedure follows additive noise models (ANMs). When the ANM is identifiable, we prove that x − f(Z) ⊥ y − g(Z) ⇒ x ⊥ y|Z. We ...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Determining conditional independence (CI) re-lationships between random variables is a chal-lenging ...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
We investigate the relationship between conditional independence (CI) x ⊥ y|Z and the independence o...
Recently, regression based conditional independence (CI) tests have been employed to solve the probl...
The algorithms for causal discovery and more broadly for learning the structure of graphical models ...
Conditional independence (CI) testing is frequently used in data analysis and machine learning for v...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Testing for conditional independence is a core part of constraint-based causal discovery. It is mai...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Conditional independence testing is an important problem, especially in Bayesian network learning an...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Conditional independence testing is an im-portant problem, especially in Bayesian net-work learning ...
This work investigates the intersection property of conditional independence. It states that for ran...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Determining conditional independence (CI) re-lationships between random variables is a chal-lenging ...
Estimating the strength of causal effects from observational data is a common problem in scientific ...
We investigate the relationship between conditional independence (CI) x ⊥ y|Z and the independence o...
Recently, regression based conditional independence (CI) tests have been employed to solve the probl...
The algorithms for causal discovery and more broadly for learning the structure of graphical models ...
Conditional independence (CI) testing is frequently used in data analysis and machine learning for v...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Testing for conditional independence is a core part of constraint-based causal discovery. It is mai...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Conditional independence testing is an important problem, especially in Bayesian network learning an...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Conditional independence testing is an im-portant problem, especially in Bayesian net-work learning ...
This work investigates the intersection property of conditional independence. It states that for ran...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Determining conditional independence (CI) re-lationships between random variables is a chal-lenging ...
Estimating the strength of causal effects from observational data is a common problem in scientific ...