International audienceDecision trees are efficient means for building classification models due to the compressibility, simplicity and ease of interpretation of their results. However, during the construction phase of decision trees, the outputs are often large trees that are affected by many uncertainties in the data (particularity, noise and residual variation). Combining attribute selection and data sampling presents one of the most promising research directions to overcome decision tree construction problems. However, the search space composed of all possible combinations of subsets of training samples and attributes is extremely large. In this paper, a novel approach is presented that allows generating an optimized decision tree by sel...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Abstract. In this paper we address the problem of multiobjective attribute selection in data mining....
In many areas, large quantities of data are generated and collected everyday, such as supermarket, b...
International audienceDecision trees are efficient means for building classification models due to t...
International audienceClassification is a central task in machine learning and data mining. Decision...
One of the major tasks in Data Mining is classification. The growing of Decision Tree from data is a...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
MasterClassification is to generate a set of rule of classifying objects into severalcategories base...
Part IV: ICT and Emerging Technologies in Production ManagementInternational audienceThe main advant...
Decision tree has most widely used for classification. However the main influence of decision tree c...
Machine learning is now in a state to get major industrial applications. The most important applicat...
One approach to induction is to develop a decision tree from a set of examples. When used with noisy...
Decision Trees are well known classification algorithms that are also appreciated for their capacity...
When predictive modeling requires comprehensible models, most data miners will use specialized techn...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Abstract. In this paper we address the problem of multiobjective attribute selection in data mining....
In many areas, large quantities of data are generated and collected everyday, such as supermarket, b...
International audienceDecision trees are efficient means for building classification models due to t...
International audienceClassification is a central task in machine learning and data mining. Decision...
One of the major tasks in Data Mining is classification. The growing of Decision Tree from data is a...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
MasterClassification is to generate a set of rule of classifying objects into severalcategories base...
Part IV: ICT and Emerging Technologies in Production ManagementInternational audienceThe main advant...
Decision tree has most widely used for classification. However the main influence of decision tree c...
Machine learning is now in a state to get major industrial applications. The most important applicat...
One approach to induction is to develop a decision tree from a set of examples. When used with noisy...
Decision Trees are well known classification algorithms that are also appreciated for their capacity...
When predictive modeling requires comprehensible models, most data miners will use specialized techn...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Abstract. In this paper we address the problem of multiobjective attribute selection in data mining....
In many areas, large quantities of data are generated and collected everyday, such as supermarket, b...