Conditional independence (CI) tests underlie many approaches to model testing and structure learning in causal inference. Most existing CI tests for categorical and ordinal data stratify the sample by the conditioning variables, perform simple independence tests in each stratum, and combine the results. Unfortunately, the statistical power of this approach degrades rapidly as the number of conditioning variables increases. Here we propose a simple unified CI test for ordinal and categorical data that maintains reasonable calibration and power in high dimensions. We show that our test outperforms existing baselines in model testing and structure learning for dense directed graphical models while being comparable for sparse models. Our approa...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Conditional independence (CI) testing is an important tool in causal discovery. Generally, by using ...
Conditional independence (CI) testing is frequently used in data analysis and machine learning for v...
Testing for conditional independence is a core part of constraint-based causal discovery. It is mai...
Conditional independence is of interest for testing unconfoundedness assumptions in causal inference...
Conditional independence testing is an important problem, especially in Bayesian network learning an...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
A new testing approach is described for improving statistical tests of independence in sets of table...
Conditional independence testing is an im-portant problem, especially in Bayesian net-work learning ...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
The algorithms for causal discovery and more broadly for learning the structure of graphical models ...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Conditional independence (CI) testing is an important tool in causal discovery. Generally, by using ...
Conditional independence (CI) testing is frequently used in data analysis and machine learning for v...
Testing for conditional independence is a core part of constraint-based causal discovery. It is mai...
Conditional independence is of interest for testing unconfoundedness assumptions in causal inference...
Conditional independence testing is an important problem, especially in Bayesian network learning an...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
A new testing approach is described for improving statistical tests of independence in sets of table...
Conditional independence testing is an im-portant problem, especially in Bayesian net-work learning ...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
The algorithms for causal discovery and more broadly for learning the structure of graphical models ...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...