Discretization is a process applied to transform continuous data into data with discrete attributes. It makes the learning step of many classification algorithms more accurate and faster. Although many efficient supervised discretization methods have been proposed, unsupervised methods such as Equal Width Discretization (EWD) and Equal Frequency Discretization (EFD) are still in use especially with datasets when classification is not available. Each of these algorithms has its drawbacks. To improve the classification accuracy of EWD, a new method based on adjustable intervals is proposed in this paper. The new method is tested using benchmarking datasets from the UCI repository of machine learning databases; the C4.5 classification algorith...
Abstract. This paper argues that two commonly-used discretization approaches, fixed k-interval discr...
Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and...
Abstract. Discretization technique plays an important role in data min-ing and machine learning. Whi...
Discretization is a process applied to transform continuous data into data with discrete attributes....
Discretization, defined as a set of cuts over domains of attributes, represents an important pre-pro...
Discretization is a data pre-processing task transforming continuous variables into discrete ones i...
This paper presents a comparison of the efficacy of unsupervised and supervised discretization metho...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
Abstract. Many of the supervised learning algorithms only work with spaces of dis-crete attributes. ...
Cataloged from PDF version of article.Many machine learning algorithms require the features to be ca...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
Abstract. Incremental Flexible Frequency Discretization (IFFD) is a recently proposed discretization...
This study analyzes the effect of discretization on classification of datasets including continuous ...
Abstract. While real data often comes in mixed format, discrete and continuous, many supervised indu...
Feature discretization (FD) techniques often yield adequate and compact representations of the data,...
Abstract. This paper argues that two commonly-used discretization approaches, fixed k-interval discr...
Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and...
Abstract. Discretization technique plays an important role in data min-ing and machine learning. Whi...
Discretization is a process applied to transform continuous data into data with discrete attributes....
Discretization, defined as a set of cuts over domains of attributes, represents an important pre-pro...
Discretization is a data pre-processing task transforming continuous variables into discrete ones i...
This paper presents a comparison of the efficacy of unsupervised and supervised discretization metho...
Many supervised machine learning algorithms require a discrete feature space. In this paper, we revi...
Abstract. Many of the supervised learning algorithms only work with spaces of dis-crete attributes. ...
Cataloged from PDF version of article.Many machine learning algorithms require the features to be ca...
Many machine learning algorithms can be applied only to data described by categorical attributes. So...
Abstract. Incremental Flexible Frequency Discretization (IFFD) is a recently proposed discretization...
This study analyzes the effect of discretization on classification of datasets including continuous ...
Abstract. While real data often comes in mixed format, discrete and continuous, many supervised indu...
Feature discretization (FD) techniques often yield adequate and compact representations of the data,...
Abstract. This paper argues that two commonly-used discretization approaches, fixed k-interval discr...
Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and...
Abstract. Discretization technique plays an important role in data min-ing and machine learning. Whi...