This work introduces methods and associated software for enhancing the interpretability of fitted models, with emphasis on classification and regression trees. We begin in Chapter 1 by describing novel techniques for growing classification and regression trees designed to induce visually interpretable trees. This is achieved by penalizing splits that extend the subset of features used in a particular branch of the tree. After a brief motivation, we summarize existing methods and introduce new ones, providing illustrative examples throughout. Using a number of real classification and regression datasets, we find that these procedures can offer more interpretable fits than the CART methodology with very modest increases in out-of-sample loss....
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
Fifty years have passed since the publication of the first regression tree algorithm. New tech-nique...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Many methods can fit models with a higher prediction accuracy, on average, than the least squares li...
Tree-based methods are a nice add-on to traditional statistical methods when solving classification ...
We describe a new method of tree-based regression. The response is estimated by building an adaptive...
This paper is concerned with the construction of regression and classification trees that are more a...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
The expansion of machine learning to high-stakes application domains such as medicine, finance, and ...
The expansion of machine learning to high-stakes application domains such as medicine, finance, and ...
Paper presented to the 4th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
Fifty years have passed since the publication of the first regression tree algorithm. New tech-nique...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
This work introduces methods and associated software for enhancing the interpretability of fitted mo...
Many methods can fit models with a higher prediction accuracy, on average, than the least squares li...
Tree-based methods are a nice add-on to traditional statistical methods when solving classification ...
We describe a new method of tree-based regression. The response is estimated by building an adaptive...
This paper is concerned with the construction of regression and classification trees that are more a...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
The expansion of machine learning to high-stakes application domains such as medicine, finance, and ...
The expansion of machine learning to high-stakes application domains such as medicine, finance, and ...
Paper presented to the 4th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
The term "model trees" is commonly used for regression trees that contain some non-trivial model in ...
Conference PaperIn this paper we challenge three of the underlying principles of CART, a well know a...
Fifty years have passed since the publication of the first regression tree algorithm. New tech-nique...