Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know approach to the construction of classification and regression trees. Our primary concern is with the penalization strategy employed to prune back an initial, overgrown tree. We reason, based on both intuitive and theoretical arguments, that the pruning rule for classification should be different from that used for regression (unlike CART). We also argue that growing a treestructured partition that is specifically fitted to the data is unnecessary. Instead, our approach to tree modeling begins with a nonadapted (fixed) dyadic tree structure and partition, much like that underlying multiscale wavelet analysis. We show that dyadic trees provide s...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
Classification and regression trees (CART) are nonparametric and nonlinear modeling techniques that ...
Breiman, Friedman, Olshen and Stone (1984) expounded a method called Classification and Regression T...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
Paper presented to the 4th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Classification and regression tree (CART) is a non-parametric methodology that was introduced first ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
Not AvailableClassification and Regression Trees (CART) is a decision tree based approach widely use...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
Classification and regression trees (CART) are nonparametric and nonlinear modeling techniques that ...
Breiman, Friedman, Olshen and Stone (1984) expounded a method called Classification and Regression T...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
Paper presented to the 4th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Classification and regression tree (CART) is a non-parametric methodology that was introduced first ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
Title: Regression trees Author: Aleh Masaila Department: Department of Probability and Mathematical ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
We propose a method of constructing regression trees within the framework of maximum likelihood. It ...
Not AvailableClassification and Regression Trees (CART) is a decision tree based approach widely use...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
Classification and regression trees (CART) are nonparametric and nonlinear modeling techniques that ...
Breiman, Friedman, Olshen and Stone (1984) expounded a method called Classification and Regression T...