The belief decision tree (BDT) approach is a decision tree in an uncertain environment where the uncertainty is represented through the Transferable Belief Model (TBM), one interpretation of the belief function theory. The uncertainty can appear either in the actual class of training objects or attribute values of objects to classify. In this paper, we develop a post-pruning method of belief decision trees in order to reduce size and improve classification accuracy on unseen cases. The pruning of decision tree has a considerable intention in the areas of machine learning
Decision tree is a divide and conquer classification method used in machine learning. Most pruning m...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
The belief decision tree (BDT) approach is a decision tree in an uncertain environment where the unc...
The belief decision tree approach is a decision tree method adapted in order to handle uncertainty...
AbstractThe belief decision tree (BDT) approach is a decision tree in an uncertain environment where...
AbstractThis paper extends the decision tree technique to an uncertain environment where the uncerta...
This paper extends the decision tree technique to an uncertain environment where the uncertainty is ...
Abstract. Decision trees are considered as an efficient technique to express classification knowledg...
Decision trees are considered as an efficient technique to express classification knowledge and to u...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
Induction methods have recently been found to be useful in a wide variety of business related proble...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
As well-known machine learning methods, decision trees are widely applied in classification and reco...
Abstract — Classification is one of the important data mining techniques and Decision Tree is a most...
Decision tree is a divide and conquer classification method used in machine learning. Most pruning m...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
The belief decision tree (BDT) approach is a decision tree in an uncertain environment where the unc...
The belief decision tree approach is a decision tree method adapted in order to handle uncertainty...
AbstractThe belief decision tree (BDT) approach is a decision tree in an uncertain environment where...
AbstractThis paper extends the decision tree technique to an uncertain environment where the uncerta...
This paper extends the decision tree technique to an uncertain environment where the uncertainty is ...
Abstract. Decision trees are considered as an efficient technique to express classification knowledg...
Decision trees are considered as an efficient technique to express classification knowledge and to u...
International audienceDecision trees are regarded as convenient machine learning techniques for solv...
Induction methods have recently been found to be useful in a wide variety of business related proble...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
As well-known machine learning methods, decision trees are widely applied in classification and reco...
Abstract — Classification is one of the important data mining techniques and Decision Tree is a most...
Decision tree is a divide and conquer classification method used in machine learning. Most pruning m...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...