An algorithm for learning decision trees for classification and prediction is described which converts realvalued attributes into intervals using statistical considerations. The trees are automatically pruned with the help of a threshold for the estimated class probabilities in an interval. By means of this threshold the user can control the complexity of the tree, i.e. the degree of approximation of class regions in feature space. Costs can be included in the learning phase if a cost matrix is given. In this case class dependent thresholds are used. Some applications are described, especially the task of predicting the high water level in a mountain river
There is a lot of approaches for data classification problems resolving. The most significant data c...
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
Decision trees are one of the main methods for solving decision problems. The goal of this thesis is...
Machine learning is now in a state to get major industrial applications. The most important applicat...
The classification of large dimensional data sets arising from the merging of remote sensing data wi...
In many areas, large quantities of data are generated and collected everyday, such as supermarket, b...
Learning classification and regression models is one of the most important subfields of machine lear...
Abstract. Decision tree learning represents a well known family of inductive learning algo-rithms th...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Abstract: In this paper, several algorithms have been developed for building decision trees from lar...
Make a decision has often many results and repercussions. These results do not have the same importa...
Abstract—Decision trees are considered to be one of the most popular approaches for representing cla...
Decision Tree classifier builds a classification model using training data. It consists of records h...
Among the learning algorithms, one of the most popular and easiest to understand is the decision tre...
Abstract — Decision trees are few of the most extensively researched domains in Knowledge Discovery....
There is a lot of approaches for data classification problems resolving. The most significant data c...
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
Decision trees are one of the main methods for solving decision problems. The goal of this thesis is...
Machine learning is now in a state to get major industrial applications. The most important applicat...
The classification of large dimensional data sets arising from the merging of remote sensing data wi...
In many areas, large quantities of data are generated and collected everyday, such as supermarket, b...
Learning classification and regression models is one of the most important subfields of machine lear...
Abstract. Decision tree learning represents a well known family of inductive learning algo-rithms th...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Abstract: In this paper, several algorithms have been developed for building decision trees from lar...
Make a decision has often many results and repercussions. These results do not have the same importa...
Abstract—Decision trees are considered to be one of the most popular approaches for representing cla...
Decision Tree classifier builds a classification model using training data. It consists of records h...
Among the learning algorithms, one of the most popular and easiest to understand is the decision tre...
Abstract — Decision trees are few of the most extensively researched domains in Knowledge Discovery....
There is a lot of approaches for data classification problems resolving. The most significant data c...
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
Decision trees are one of the main methods for solving decision problems. The goal of this thesis is...