Decision Trees are well known for their training efficiency and their interpretable knowledge representation. They apply a greedy search and a divide-and-conquer approach to learn patterns. The greedy search is based on the evaluation criterion on the candidate splits at each node. Although research has been performed on various such criteria, there is no significant improvement from the classical split approaches introduced in the early decision tree literature. This paper presents a new evaluation rule to determine candidate splits in decision tree classifiers. The experiments show that this new evaluation rule reduces the size of the resulting tree, while maintaining the tree’s accuracy
AbstractWe consider a boosting technique that can be directly applied to multiclass classification p...
Decision tree classiers are a widely used tool in data stream mining. The use of condence intervals ...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
Decision Trees are well known for their training efficiency and their interpretable knowledge repres...
Decision Trees are well known for their training efficiency and their interpretable knowledge repres...
Abstract—It is important to use a better criterion in selection and discretization of attributes for...
In this paper, we consider decision trees that use both conventional queries based on one attribute ...
Decision tree classifiers are a widely used tool in data stream mining. The use of confidence interv...
Data mining is the process of extracting informative patterns from data stored in a database or data...
We present a new method for top-down induction of decision trees (TDIDT) with multivariate binary sp...
Decision trees in which numeric attributes are split several ways are more comprehensible than the u...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
© 2016 The construction of efficient and effective decision trees remains a key topic in machine lea...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
AbstractWe consider a boosting technique that can be directly applied to multiclass classification p...
Decision tree classiers are a widely used tool in data stream mining. The use of condence intervals ...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...
Decision Trees are well known for their training efficiency and their interpretable knowledge repres...
Decision Trees are well known for their training efficiency and their interpretable knowledge repres...
Abstract—It is important to use a better criterion in selection and discretization of attributes for...
In this paper, we consider decision trees that use both conventional queries based on one attribute ...
Decision tree classifiers are a widely used tool in data stream mining. The use of confidence interv...
Data mining is the process of extracting informative patterns from data stored in a database or data...
We present a new method for top-down induction of decision trees (TDIDT) with multivariate binary sp...
Decision trees in which numeric attributes are split several ways are more comprehensible than the u...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
© 2016 The construction of efficient and effective decision trees remains a key topic in machine lea...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
AbstractWe consider a boosting technique that can be directly applied to multiclass classification p...
Decision tree classiers are a widely used tool in data stream mining. The use of condence intervals ...
Several algorithms have been proposed in the literature for building decision trees (DT) for large d...