The decision tree is a well-known methodology for classification and regression. In this dissertation, we focus on the minimization of the misclassification rate for decision tree classifiers. We derive the necessary equations that provide the optimal tree prediction, the estimated risk of the tree\u27s prediction, and the reliability of the tree\u27s risk estimation. We carry out an extensive analysis of the application of Lidstone\u27s law of succession for the estimation of the class probabilities. In contrast to existing research, we not only compute the expected values of the risks but also calculate the corresponding reliability of the risk (measured by standard deviations). We also provide an explicit expression of the k-norm estimat...
Abstract. We describe an experimental study of pruning methods for decision tree classiers when the ...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Decision trees are well-known and established models for classification and regression. In this pape...
Decision trees are well-known and established models for classification and regression. In this pape...
The decision tree classifier is a well-known methodology for classification. It is widely accepted t...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
Abstract: The goal of the paper is to estimate misclassification probability for decision function b...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Pruning is one of the key procedures in training decision tree classifiers. It removes trivial rules...
* The work is supported by RFBR, grant 04-01-00858-aThe goal of the paper is to estimate misclassifi...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Abstract. We describe an experimental study of pruning methods for decision tree classiers when the ...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...
Decision trees are well-known and established models for classification and regression. In this pape...
Decision trees are well-known and established models for classification and regression. In this pape...
The decision tree classifier is a well-known methodology for classification. It is widely accepted t...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
Abstract: The goal of the paper is to estimate misclassification probability for decision function b...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
Pruning is one of the key procedures in training decision tree classifiers. It removes trivial rules...
* The work is supported by RFBR, grant 04-01-00858-aThe goal of the paper is to estimate misclassifi...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Abstract. We describe an experimental study of pruning methods for decision tree classiers when the ...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Top-down induction of decision trees has been observed to suer from the inadequate functioning of th...