Many machine learning algorithms can be applied only to data described by categorical attributes. So discretizatioti of continuous attributes is one of the important steps in preprocessing of extracting knowledge. Traditional discretization algorithms based on clustering need a pre-determined clustering number k, also typically are applied in an unsupervised learning framework. This paper describes such an algorithm, called SX-means (Supervised X-means), which is a new algorithm of supervised discretization of continuous attributes on clustering. The algorithm modifies clusters with knowledge of the class distribution dynamically. And this procedure can not stop until the proper k is found. For the number of clusters k is not pre-determined...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
We address the problem of discretization of continuous variables for machine learning classification...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Attribute reduction aims to reduce the dimensionality of large scale data without losing useful info...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
AbstractDiscretization of continuous attributes is one of the important steps in preprocessing of da...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
We propose a new method for discretization, which uses clustering to determine candidate boundaries....
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
In this paper a novel data mining algorithm, Clustering and Classification Algorithm-Supervised (CCA...
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...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
We address the problem of discretization of continuous variables for machine learning classification...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Attribute reduction aims to reduce the dimensionality of large scale data without losing useful info...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
AbstractDiscretization of continuous attributes is one of the important steps in preprocessing of da...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
We propose a new method for discretization, which uses clustering to determine candidate boundaries....
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
In this paper a novel data mining algorithm, Clustering and Classification Algorithm-Supervised (CCA...
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...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
AbstractIn real-time data mining applications discrete values play vital role in knowledge represent...