Several fuzzy extensions of decision tree induction, which is an established machine-learning method, have already been proposed in the literature. So far, however, fuzzy decision trees have almost exclusively been used for the performance task of classification. In this paper, we show that a fuzzy extension of decision trees is arguably more useful for another performance task, namely ranking. Roughly, the goal of ranking is to order a set of instances from most likely positive to most likely negative. The motivation for applying fuzzy decision trees to this problem originates from recent investigations of the ranking performance of conventional decision trees. These investigations will be continued and complemented in this paper. Our resu...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
Several fuzzy extensions of decision tree induction, which is an established machine-learning method...
Several fuzzy extensions of decision tree induction, which is an established machine-learning method...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Fuzzy classification is one of the most important applications of fuzzy logic. Its goal is to find a...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
peer reviewedOne of the main difficulties with standard top down induction of decision trees comes fr...
In this paper, we present a matching method that can improve the classification performance of a fuz...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
Several fuzzy extensions of decision tree induction, which is an established machine-learning method...
Several fuzzy extensions of decision tree induction, which is an established machine-learning method...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
The inductive learning methodology known as decision trees, concerns the ability to classify objects...
Fuzzy classification is one of the most important applications of fuzzy logic. Its goal is to find a...
In this paper, a new method of fuzzy decision trees called soft decision trees (SDT) is presented. T...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
The first (crisp) decision tree techniques were introduced in the 1960s (Hunt, Marin, & Stone, 1966)...
peer reviewedOne of the main difficulties with standard top down induction of decision trees comes fr...
In this paper, we present a matching method that can improve the classification performance of a fuz...
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquis...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...
The general fuzzy decision tree approach encapsulates the benefits of being an inductive learning te...