In decision tree learning, the traditional top-down divide and conquer approach searches a limited part of the hypothesis space, often leading to sub-optimal solutions. By doing decision tree induction with the use of an evolutionary algorithm the hypothesis space can be searched globally, leading to stronger solutions, while maintaining the inherent comprehensibility that decision trees offers. We have developed EMTI, the Evolutionary Multi-class Tree Inductor, a genetic programming method for inducing parallel axis, poly-ary decision trees for multiclass classification problems. It focuses on creating accurate decision trees with a high degree of human readability. EMTI uses a genetic programming encoding-scheme representing individuals d...
International audienceClassification is a central task in machine learning and data mining. Decision...
This study reports the empirical analysis of a hyper-heuristic evolutionary algorithm that is capabl...
This paper develops an Evolutionary Elliptical Cost-Sensitive Decision Tree Algorithm (EECSDT) which...
Part 2: AlgorithmsInternational audienceDecision trees are among the most popular classification alg...
Decision trees are among the most popular classification algorithms due to their knowledge represent...
Decision tree induction algorithms represent one of the most popular techniques for dealing with cla...
Decision tree induction is one of the most employed methods to extract knowledge from data, since th...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Abstract. Instead of using or fine-tuning the well-known greedy methods to induce decision trees, we...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
Abstract: In the paper, an evolutionary algorithm for global induction of decision trees is presente...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
Among the several tasks that evolutionary algorithms have successfully employed, the induction of c...
Abstract. In most of data mining systems decision trees are induced in a top-down manner. This greed...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
International audienceClassification is a central task in machine learning and data mining. Decision...
This study reports the empirical analysis of a hyper-heuristic evolutionary algorithm that is capabl...
This paper develops an Evolutionary Elliptical Cost-Sensitive Decision Tree Algorithm (EECSDT) which...
Part 2: AlgorithmsInternational audienceDecision trees are among the most popular classification alg...
Decision trees are among the most popular classification algorithms due to their knowledge represent...
Decision tree induction algorithms represent one of the most popular techniques for dealing with cla...
Decision tree induction is one of the most employed methods to extract knowledge from data, since th...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Abstract. Instead of using or fine-tuning the well-known greedy methods to induce decision trees, we...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
Abstract: In the paper, an evolutionary algorithm for global induction of decision trees is presente...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
Among the several tasks that evolutionary algorithms have successfully employed, the induction of c...
Abstract. In most of data mining systems decision trees are induced in a top-down manner. This greed...
This paper presents a survey of evolutionary algorithms that are designed for decision-tree inductio...
International audienceClassification is a central task in machine learning and data mining. Decision...
This study reports the empirical analysis of a hyper-heuristic evolutionary algorithm that is capabl...
This paper develops an Evolutionary Elliptical Cost-Sensitive Decision Tree Algorithm (EECSDT) which...