Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually large) datasets characterized by n objects (records), each one containing a set x of numerical or nominal attributes, and a special feature y designed as its outcome. Statisticians use the terms “predictors” to identify attributes and “response variable” for the outcome. DTI builds a model that summarizes the underlying relationships between x and y. Actually, two kinds of model can be estimated using decision trees: classification trees if y is nominal, and regression trees if y is numerical. Hereinafter we refer to classification trees to show the main features of DTI. For a detailed insight into the characteristics of regression trees see...
Inductive symbolic learning algorithms have been used successfully over the years to build knowledge...
This paper compares the performance of logistic regression to decision-tree induction in classifying...
Present world is characterized by ever growing volume of data collected and saved into data- bases....
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Decision Tree Induction (DTI), one of the data mining classification methods, is used in this resear...
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
The aim of the present work is to show that decision tree induction algorithms are a useful tool for...
A machine learning technique called Graph-Based Induction (GBI) efficiently extracts typical pattern...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Inductive symbolic learning algorithms have been used successfully over the years to build knowledge...
Among the learning algorithms, one of the most popular and easiest to understand is the decision tre...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
In medical decision making (classification, diagnosing, etc.) there are many situations where decisi...
Abstract: Decision tree study is a predictive modelling tool that is used over many grounds. It is c...
Inductive symbolic learning algorithms have been used successfully over the years to build knowledge...
This paper compares the performance of logistic regression to decision-tree induction in classifying...
Present world is characterized by ever growing volume of data collected and saved into data- bases....
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
This paper describes the use of decision tree and rule induction in data mining applications. Of met...
Decision Tree Induction (DTI), one of the data mining classification methods, is used in this resear...
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
The aim of the present work is to show that decision tree induction algorithms are a useful tool for...
A machine learning technique called Graph-Based Induction (GBI) efficiently extracts typical pattern...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Inductive symbolic learning algorithms have been used successfully over the years to build knowledge...
Among the learning algorithms, one of the most popular and easiest to understand is the decision tre...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
In medical decision making (classification, diagnosing, etc.) there are many situations where decisi...
Abstract: Decision tree study is a predictive modelling tool that is used over many grounds. It is c...
Inductive symbolic learning algorithms have been used successfully over the years to build knowledge...
This paper compares the performance of logistic regression to decision-tree induction in classifying...
Present world is characterized by ever growing volume of data collected and saved into data- bases....