The preference scaling of a group of subjects may not be homogeneous, but different groups of subjects with certain characteristics may show different preference scalings, each of which can be derived from paired comparisons by means of the Bradley-Terry model. Usually, either different models are fit in predefined subsets of the sample, or the effects of subject covariates are explicitly specified in a parametric model. In both cases, categorical covariates can be employed directly to distinguish between the different groups, while numeric covariates are typically discretized prior to modeling. Here, a semi-parametric approach for recursive partitioning of Bradley-Terry models is introduced as a means for ident...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Recursive partitioning based on psychometric models,employing the general MOB algo- rithm (from pack...
The preference scaling of a group of subjects may not be homogeneous, but different groups of sub...
The preference scaling of a group of subjects may not be homogeneous, but different groups of subjec...
The preference scaling of a group of subjects may not be homogeneous, but different groups of subjec...
This paper introduces the Bradley-Terry regression trunk model, a novel probabilistic approach for t...
In paired comparison models, the inclusion of covariates is a tool to account for the heterogeneity ...
In paired comparison models, the inclusion of covariates is a tool to account for the heterogeneity ...
The simple Bradley-Terry model postulates a latent "ability" scale for compared objects, where diffe...
A variety of new statistical methods from the field of machine learning have the potential to offer ...
We introduce a Bayesian framework for modeling individual differences, in which subjects are assumed...
In traditional paired comparison models heterogeneity in the population is simply ignored and it is ...
This research presents a new probabilistic approach for the analysis of preference data when dealin...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Recursive partitioning based on psychometric models,employing the general MOB algo- rithm (from pack...
The preference scaling of a group of subjects may not be homogeneous, but different groups of sub...
The preference scaling of a group of subjects may not be homogeneous, but different groups of subjec...
The preference scaling of a group of subjects may not be homogeneous, but different groups of subjec...
This paper introduces the Bradley-Terry regression trunk model, a novel probabilistic approach for t...
In paired comparison models, the inclusion of covariates is a tool to account for the heterogeneity ...
In paired comparison models, the inclusion of covariates is a tool to account for the heterogeneity ...
The simple Bradley-Terry model postulates a latent "ability" scale for compared objects, where diffe...
A variety of new statistical methods from the field of machine learning have the potential to offer ...
We introduce a Bayesian framework for modeling individual differences, in which subjects are assumed...
In traditional paired comparison models heterogeneity in the population is simply ignored and it is ...
This research presents a new probabilistic approach for the analysis of preference data when dealin...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Recursive partitioning based on psychometric models,employing the general MOB algo- rithm (from pack...