textabstractThis paper focuses on the problem of monotone decision trees from the point of view of the multicriteria decision aid methodology (MCDA). By taking into account the preferences of the decision maker, an attempt is made to bring closer similar research within machine learning and MCDA. The paper addresses the question how to label the leaves of a tree in a way that guarantees the monotonicity of the resulting tree. Two approaches are proposed for that purpose - dynamic and static labeling which are also compared experimentally. The paper further considers the problem of splitting criteria in the con- text of monotone decision trees. Two criteria from the literature are com- pared experimentally - the entropy criterion ...
Machine learning methods for classification problems commonly assume that the class values are unord...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
Abstract—In many decision making tasks, values of features and decision are ordinal. Moreover, there...
In machine learning, monotone classification is concerned with a classification function to learn in...
In many real world applications classification models are required to be in line with domain knowled...
textabstractEUR-FEW-CS-97-07 Title Monotone decision trees Author(s) R. Potharst J.C. Bioch T. Pette...
One of the factors hindering the use of classification models in decision making is that their predi...
Monotone constraints are very common while dealing with multi-attribute ordinal problems. Grinding w...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
Noise in multi-criteria data sets can manifest itself as non-monotonicity. Work on the remediation o...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Induction of decision trees and regression trees is a powerful technique not only for performing ord...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Machine learning methods for classification problems commonly assume that the class values are unord...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
Abstract—In many decision making tasks, values of features and decision are ordinal. Moreover, there...
In machine learning, monotone classification is concerned with a classification function to learn in...
In many real world applications classification models are required to be in line with domain knowled...
textabstractEUR-FEW-CS-97-07 Title Monotone decision trees Author(s) R. Potharst J.C. Bioch T. Pette...
One of the factors hindering the use of classification models in decision making is that their predi...
Monotone constraints are very common while dealing with multi-attribute ordinal problems. Grinding w...
The objective of data mining is the extraction of knowledge from databases. In practice, one often e...
Noise in multi-criteria data sets can manifest itself as non-monotonicity. Work on the remediation o...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Induction of decision trees and regression trees is a powerful technique not only for performing ord...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Machine learning methods for classification problems commonly assume that the class values are unord...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...