This paper presents an empirical investigation of eight well-known simplification methods for decision trees induced from training data. Twelve data sets are considered to compare both the accuracy and the complexity of simplified trees. The computation of optimally pruned trees is used in order to give a clear definition of bias of the methods towards overpruning and underpruning. The results indicate that the simplification strategies which exploit an independent pruning set do not perform better than the others. Furthermore, some methods show an evident bias towards either underpruning or overpruning
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
This paper presents an empirical investigation of eight well-known simplification methods for deci...
This paper presents some empirical results on simplification methods of decision trees induced from ...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
Induced decision trees are an extensively-researched solution to classification tasks. For many prac...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Many systems have been developed for constructing decision trees from collections of examples. Alt...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Various factors aecting decision tree learning time are explored. The factors which consistently aec...
Induction methods have recently been found to be useful in a wide variety of business related proble...
The current availability of efficient algorithms for deci- sion tree induction makes intricate post-...
We report on a series of experiments in which all decision trees consistent with the training data a...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...
This paper presents an empirical investigation of eight well-known simplification methods for deci...
This paper presents some empirical results on simplification methods of decision trees induced from ...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
Induced decision trees are an extensively-researched solution to classification tasks. For many prac...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Many systems have been developed for constructing decision trees from collections of examples. Alt...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Various factors aecting decision tree learning time are explored. The factors which consistently aec...
Induction methods have recently been found to be useful in a wide variety of business related proble...
The current availability of efficient algorithms for deci- sion tree induction makes intricate post-...
We report on a series of experiments in which all decision trees consistent with the training data a...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
Design of ensemble classifiers involves three factors: 1) a learning algorithm to produce a classifi...