Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and data mining tasks. Its main goal is to transform a set of continuous attributes into discrete ones, by associating categorical values to intervals and thus transforming quantitative data into qualitative data. In this manner, symbolic data mining algorithms can be applied over continuous data and the representation of information is simplified, making it more concise and specific. The literature provides numerous proposals of discretization and some attempts to categorize them into a taxonomy can be found. However, in previous papers, there is a lack of consensus in the definition of the properties and no formal categorization has been estab...
Abstract. Many of the supervised learning algorithms only work with spaces of dis-crete attributes. ...
This study analyzes the effect of discretization on classification of datasets including continuous ...
We address the problem of discretization of continuous variables for machine learning classification...
Typically discretisation procedures are implemented as a part of initial pre-processing of data, bef...
In Classification learning, an algorithm is presented with a set of classified examples or ‘‘instanc...
AbstractWhen data are high dimensional and mix-typed while response variable is categorical, an effe...
Data mining as a formal discipline is only two decades old, but it has registered phenomenal develop...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
Abstract. In this paper, we focus on top-down discretization methods and propose a new method for su...
AbstractWhen data are high dimensional with a response variable categorical and explanatory variable...
Discretization of numerical data is one of the most influential data preprocessing tasks in knowledg...
Natural features are often continuous, but many models of human learning and categorization involve ...
[[abstract]]Discretization algorithms have played an important role in data mining and knowledge dis...
In this work, a new technique to define cut-points in the discretization process of a continuous att...
Abstract. Many of the supervised learning algorithms only work with spaces of dis-crete attributes. ...
This study analyzes the effect of discretization on classification of datasets including continuous ...
We address the problem of discretization of continuous variables for machine learning classification...
Typically discretisation procedures are implemented as a part of initial pre-processing of data, bef...
In Classification learning, an algorithm is presented with a set of classified examples or ‘‘instanc...
AbstractWhen data are high dimensional and mix-typed while response variable is categorical, an effe...
Data mining as a formal discipline is only two decades old, but it has registered phenomenal develop...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
Abstract. In this paper, we focus on top-down discretization methods and propose a new method for su...
AbstractWhen data are high dimensional with a response variable categorical and explanatory variable...
Discretization of numerical data is one of the most influential data preprocessing tasks in knowledg...
Natural features are often continuous, but many models of human learning and categorization involve ...
[[abstract]]Discretization algorithms have played an important role in data mining and knowledge dis...
In this work, a new technique to define cut-points in the discretization process of a continuous att...
Abstract. Many of the supervised learning algorithms only work with spaces of dis-crete attributes. ...
This study analyzes the effect of discretization on classification of datasets including continuous ...
We address the problem of discretization of continuous variables for machine learning classification...