Recursive binary partitioning is a popular tool for regression analysis. Two fundamental problems of exhaustive search procedures usually applied to fit such models have been known for a long time: Overfitting and a selection bias towards covariates with many possible splits or missing values. While pruning procedures are able to solve the overfitting problem, the variable selection bias still seriously effects the interpretability of tree-structured regression models. For some special cases unbiased procedures have been suggested, however lacking a common theoretical foundation. We propose a unified framework for recursive partitioning which embeds tree-structured regression models into a well defined theory of conditional inference proced...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...
Stability aspects of recursive partitioning procedures are investigated. Using resampling techniques...
In this paper we propose a strategy aimed at variable selection in models for ordinal data. The pro...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Version 1.0-17 Description A computational toolbox for recursive partitioning. The core of the packa...
Version 1.0-13 Description A computational toolbox for recursive partitioning. The core of the packa...
Version 1.0-23 Description A computational toolbox for recursive partitioning. The core of the packa...
Recursive partitioning methods from machine learning are being widely applied in many scientific fie...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Stability aspects of recursive partitioning procedures are investigated. Using resampling techniques...
A tree-based method for identification of a balanced group of observa- tions in casual inference stu...
A variety of new statistical methods from the field of machine learning have the potential to offer ...
A tree-based approach for identification of a balanced group of observations in causal inference stu...
Traditionally, multiple linear regression has been widely used in the field of organizational scienc...
Decision tree learning is increasingly being used for pointwise inference. Important applications in...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...
Stability aspects of recursive partitioning procedures are investigated. Using resampling techniques...
In this paper we propose a strategy aimed at variable selection in models for ordinal data. The pro...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Version 1.0-17 Description A computational toolbox for recursive partitioning. The core of the packa...
Version 1.0-13 Description A computational toolbox for recursive partitioning. The core of the packa...
Version 1.0-23 Description A computational toolbox for recursive partitioning. The core of the packa...
Recursive partitioning methods from machine learning are being widely applied in many scientific fie...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Stability aspects of recursive partitioning procedures are investigated. Using resampling techniques...
A tree-based method for identification of a balanced group of observa- tions in casual inference stu...
A variety of new statistical methods from the field of machine learning have the potential to offer ...
A tree-based approach for identification of a balanced group of observations in causal inference stu...
Traditionally, multiple linear regression has been widely used in the field of organizational scienc...
Decision tree learning is increasingly being used for pointwise inference. Important applications in...
The party package (Hothorn, Hornik, and Zeileis 2006) aims at providing a recur-sive part(y)itioning...
Stability aspects of recursive partitioning procedures are investigated. Using resampling techniques...
In this paper we propose a strategy aimed at variable selection in models for ordinal data. The pro...