... This article presents a unifying framework according to which any pruning method can be defined as a four-tuple (Space, Operators, Evaluation function, Search strategy), and the pruning process can be cast as an optimization problem. Six well-known pruning methods are investigated by means of this framework and their common aspects, strengths and weaknesses are described. Furthermore, a new empirical analysis of the effect of post-pruning on both the predictive accuracy and the size of induced decision trees is reported. The experimental comparison of the pruning methods involves 14 datasets and is based on the cross-validation procedure. The results confirm most of the conclusions drawn in a previous comparison based on the holdout pro...
This paper extends recent work on decision tree grafting. Grafting is an inductive process that adds...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...
To date, decision trees are among the most used classification models. They owe their popularity to ...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
It has been asserted that, using traditional pruning methods, growing decision trees with increasing...
This paper presents some empirical results on simplification methods of decision trees induced from ...
Machine learning algorithms are techniques that automatically build models describing the structure ...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Error based pruning can be used to prune a decision tree and it does not require the use of validati...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Induction methods have recently been found to be useful in a wide variety of business related proble...
Decision tree is a divide and conquer classification method used in machine learning. Most pruning m...
This paper extends recent work on decision tree grafting. Grafting is an inductive process that adds...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...
To date, decision trees are among the most used classification models. They owe their popularity to ...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
It has been asserted that, using traditional pruning methods, growing decision trees with increasing...
This paper presents some empirical results on simplification methods of decision trees induced from ...
Machine learning algorithms are techniques that automatically build models describing the structure ...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Error based pruning can be used to prune a decision tree and it does not require the use of validati...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Induction methods have recently been found to be useful in a wide variety of business related proble...
Decision tree is a divide and conquer classification method used in machine learning. Most pruning m...
This paper extends recent work on decision tree grafting. Grafting is an inductive process that adds...
Abstract. We describe an experimental study of pruning methods for decision tree classiers in two le...
To date, decision trees are among the most used classification models. They owe their popularity to ...