The main goal of this paper is to describe a newpruning method for solving decision trees and game trees. The pruning method for decision trees suggests a slight variant of decision trees that we call scenario trees. In scenario trees, we do not need a conditional probability for each edge emanating from a chance node. Instead, we require a joint probability for each path from the root node to a leaf node. We compare the pruning method to the traditional rollback method for decision trees and game trees. For problems that require Bayesian revision of probabilities, a scenario tree representation with the pruning method is more efficient than a decision tree representation with the rollback method. For game trees, the pruning method is mor...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
(A) A snapshot of the search tree. Nodes of the tree represent states, and each state has a number o...
AbstractPruning decision trees is a useful technique for improving the generalization performance in...
The main goal of this paper is to describe a newpruning method for solving decision trees and game t...
Game trees (or extensive-form games) were first defined by von Neumann and Morgenstern in 1944. In t...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
Decision tree pruning is critical for the construction of good decision trees. The most popular and ...
A complexity based pruning procedure for classification trees is described, and bounds on its finite...
Bayesian decision tree analysis has been widely used as a basis for quality control decision making....
To date, decision trees are among the most used classification models. They owe their popularity to ...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
We design efficient on-line algorithms that predict nearly as well as the best pruning of a planar d...
Abstract Probability trees are decision trees that predict class probabilities rather than the most ...
This paper provides a maximum likelihood estimation strategy to identify a tree-based model which, ...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
(A) A snapshot of the search tree. Nodes of the tree represent states, and each state has a number o...
AbstractPruning decision trees is a useful technique for improving the generalization performance in...
The main goal of this paper is to describe a newpruning method for solving decision trees and game t...
Game trees (or extensive-form games) were first defined by von Neumann and Morgenstern in 1944. In t...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
Decision tree pruning is critical for the construction of good decision trees. The most popular and ...
A complexity based pruning procedure for classification trees is described, and bounds on its finite...
Bayesian decision tree analysis has been widely used as a basis for quality control decision making....
To date, decision trees are among the most used classification models. They owe their popularity to ...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
We design efficient on-line algorithms that predict nearly as well as the best pruning of a planar d...
Abstract Probability trees are decision trees that predict class probabilities rather than the most ...
This paper provides a maximum likelihood estimation strategy to identify a tree-based model which, ...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
(A) A snapshot of the search tree. Nodes of the tree represent states, and each state has a number o...
AbstractPruning decision trees is a useful technique for improving the generalization performance in...