Weights-of-evidence modeling is a GIS-based technique for relating a point pattern for lo-cations of discrete events with several map layers. In general, the map layers are binary or ternary. Weights for presence, absence or missing data are added to a prior logit. Updating with two or more map layers is allowed only if the map layers are approximately condition-ally independent of the point pattern. The final product is a map of posterior probabilities of occurrence of the discrete event within a small unit cell. This paper contains formal proof that conditional independence of map layers implies that T, the sum of the posterior probabilities weighted according to unit cell area, is equal to n, being the total number of discrete events. Th...
Testing for the independence between two categorical variables R and S forming a contingency table i...
A new testing approach is described for improving statistical tests of independence in sets of table...
This paper introduces a conditional Kolmogorov test, in the spirit of Andrews (1997), that allows fo...
Conditional independence tests (CI tests) have received special at-tention lately in Machine Learnin...
Conditional independence tests have received special attention lately in machine learning and comput...
This paper proposes a nonparametric test for conditional independence that is easy to implement, yet...
Conditional independence tests have received special attention lately in machine learning and comput...
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...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The topic of the paper is computer testing of (probabilistic) conditional independence (CI) implicat...
In this paper we propose a new procedure for testing independence of random variables, which is base...
This article introduces a Bayesian nonparametric method for quantifying the relative evidence in a d...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Testing for the independence between two categorical variables R and S forming a contingency table i...
A new testing approach is described for improving statistical tests of independence in sets of table...
This paper introduces a conditional Kolmogorov test, in the spirit of Andrews (1997), that allows fo...
Conditional independence tests (CI tests) have received special at-tention lately in Machine Learnin...
Conditional independence tests have received special attention lately in machine learning and comput...
This paper proposes a nonparametric test for conditional independence that is easy to implement, yet...
Conditional independence tests have received special attention lately in machine learning and comput...
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...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The topic of the paper is computer testing of (probabilistic) conditional independence (CI) implicat...
In this paper we propose a new procedure for testing independence of random variables, which is base...
This article introduces a Bayesian nonparametric method for quantifying the relative evidence in a d...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
Testing for conditional independence is a core aspect of constraint-based causal discovery. Although...
Testing for the independence between two categorical variables R and S forming a contingency table i...
A new testing approach is described for improving statistical tests of independence in sets of table...
This paper introduces a conditional Kolmogorov test, in the spirit of Andrews (1997), that allows fo...