To date, decision trees are among the most used classification models. They owe their popularity to their efficiency during both the learning and the classification phases and, above all, to the high interpretability of the learned classifiers. This latter aspect is of primary importance in those domains in which understanding and validating the decision process is as important as the accuracy degree of the prediction. Pruning is a common technique used to reduce the size of decision trees, thus improving their interpretability and possibly reducing the risk of overfitting. In the present work, we investigate on the integration between evolutionary algorithms and decision tree pruning, presenting a decision tree post-pruning strategy based ...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
To date, decision trees are among the most used classification models. They owe their popularity to ...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
Among the several tasks that evolutionary algorithms have successfully employed, the induction of c...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
Abstract. Instead of using or fine-tuning the well-known greedy methods to induce decision trees, we...
AbstractPruning decision trees is a useful technique for improving the generalization performance in...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
In decision tree learning, the traditional top-down divide and conquer approach searches a limited p...
... This article presents a unifying framework according to which any pruning method can be defined ...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
To date, decision trees are among the most used classification models. They owe their popularity to ...
In this paper, we address the problem of retrospectively pruning decision trees induced from data, a...
Several methods have been proposed in the literature for decision tree (post)-pruning. This article ...
Among the several tasks that evolutionary algorithms have successfully employed, the induction of c...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
Abstract. Instead of using or fine-tuning the well-known greedy methods to induce decision trees, we...
AbstractPruning decision trees is a useful technique for improving the generalization performance in...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
In decision tree learning, the traditional top-down divide and conquer approach searches a limited p...
... This article presents a unifying framework according to which any pruning method can be defined ...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...