A new testing approach is described for improving statistical tests of independence in sets of tables stratified on one or more relevant factors in case of categorical (nominal or ordinal) variables. Common tests of independence that exploit the ordinality of one of the variables use a restricted-alternative approach. A different, relaxed-null method is presented. Specifically, the M-moment score tests and the correlation tests are introduced. Using multinomial-Poisson homogeneous modeling theory, it is shown that these tests are computationally and conceptually simple, and simulation results suggest that they can perform better than other common tests of conditional independence. To illustrate, the proposed tests are used to better under...
Conditional independence tests have received special attention lately in machine learning and comput...
International audienceA nonparametric test of the mutual independence between many numerical random ...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
A new testing approach is described for improving statistical tests of independence in sets of table...
A new approach is described for improving statistical tests of independence between two categorical ...
Testing for the independence between two categorical variables R and S forming a contingency table i...
AbstractTesting for the independence between two categorical variables R and S forming a contingency...
The main purpose of this work is to describe three well-known statistical tests of independence in t...
AbstractConsider an r × c contingency table under the full multinomial model where each category is ...
Consider an r - c contingency table under the full multinomial model where each category is ordered....
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
This paper deals with statistical tests in stratified fourfold tables. Several tests of conditional ...
nonparametric regression; conditional independence; adjusted Nadaraya-Watson estimator; long-range d...
New test statistics are proposed for testing whether two random vectors are independent. Gieser and ...
In the first part of our research, we propose a new interpoint-ranking sign covariance measure for ...
Conditional independence tests have received special attention lately in machine learning and comput...
International audienceA nonparametric test of the mutual independence between many numerical random ...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...
A new testing approach is described for improving statistical tests of independence in sets of table...
A new approach is described for improving statistical tests of independence between two categorical ...
Testing for the independence between two categorical variables R and S forming a contingency table i...
AbstractTesting for the independence between two categorical variables R and S forming a contingency...
The main purpose of this work is to describe three well-known statistical tests of independence in t...
AbstractConsider an r × c contingency table under the full multinomial model where each category is ...
Consider an r - c contingency table under the full multinomial model where each category is ordered....
Rank correlations have found many innovative applications in the last decade. In particular,suitable...
This paper deals with statistical tests in stratified fourfold tables. Several tests of conditional ...
nonparametric regression; conditional independence; adjusted Nadaraya-Watson estimator; long-range d...
New test statistics are proposed for testing whether two random vectors are independent. Gieser and ...
In the first part of our research, we propose a new interpoint-ranking sign covariance measure for ...
Conditional independence tests have received special attention lately in machine learning and comput...
International audienceA nonparametric test of the mutual independence between many numerical random ...
Conditional independence (CI) tests underlie many approaches to model testing and structure learning...