Real-life data usually are presented in databases by real numbers. On the other hand, most inductive learning methods require a small number of attribute values. Thus it is necessary to convert input data sets with continuous attributes into input data sets with discrete attributes. Methods of discretization restricted to single continuous attributes will be called local, while methods that simultaneously convert all continuous attributes will be called global. in this paper, a method of transforming any local discretization method into a global one is presented. A global discretization method, based on cluster analysis is presented and compared experimentally with three known local methods, transformed into global. Experiments include tenf...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...
Abstract: Machine learning algorithms designed for engineering applications must be able to handle n...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
We address the problem of discretization of continuous variables for machine learning classification...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
AbstractDiscretization of continuous attributes is one of the important steps in preprocessing of da...
Many data mining and machine learning algorithms require databases in which objects are described by...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...
Abstract: Machine learning algorithms designed for engineering applications must be able to handle n...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
We address the problem of discretization of continuous variables for machine learning classification...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
AbstractDiscretization of continuous attributes is one of the important steps in preprocessing of da...
Many data mining and machine learning algorithms require databases in which objects are described by...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...
Abstract: Machine learning algorithms designed for engineering applications must be able to handle n...