AbstractWhen data are high dimensional and mix-typed while response variable is categorical, an effective executable profile consists of categorical or categorized variables with easily understandable statistics. Many data mining technologies require categor- ical variables; many have better results by changing continuous variables to categorical variables. Discretizing a continuous variable can be accomplished in either a supervised way or an unsupervised or conventional way. We propose a supervised discretizing method using the Goodman-Kruskal tau (or GK-τ) maximization as the discretization optimization criterion. This optimization is probabilistic averaging effect oriented. An experiment with financial loan application is designed to sh...
In this work, a new technique to define cut-points in the discretization process of a continuous att...
Very often statistical method or machine learning algorithms can handle discrete attributes only. An...
This paper presents a comparison of the efficacy of unsupervised and supervised discretization metho...
AbstractWhen data are high dimensional and mix-typed while response variable is categorical, an effe...
AbstractWhen data are high dimensional with a response variable categorical and explanatory variable...
Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
Discretization of continuous variables so they may be used in conjunction with machine learning or s...
Abstract. In this paper, we focus on top-down discretization methods and propose a new method for su...
The automated credit scoring tools play a crucial role in many financial environments, since they ar...
International audienceCredit institutions are interested in the refunding probability of a loan give...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
This paper proposes a rule for optimizing a predictive discriminant function (PDF) in discriminant a...
For regulatory and interpretability reasons, the logistic regression is still widely used by financi...
This study analyzes the effect of discretization on classification of datasets including continuous ...
In this work, a new technique to define cut-points in the discretization process of a continuous att...
Very often statistical method or machine learning algorithms can handle discrete attributes only. An...
This paper presents a comparison of the efficacy of unsupervised and supervised discretization metho...
AbstractWhen data are high dimensional and mix-typed while response variable is categorical, an effe...
AbstractWhen data are high dimensional with a response variable categorical and explanatory variable...
Abstract—Discretization is an essential preprocessing technique used in many knowledge discovery and...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
Discretization of continuous variables so they may be used in conjunction with machine learning or s...
Abstract. In this paper, we focus on top-down discretization methods and propose a new method for su...
The automated credit scoring tools play a crucial role in many financial environments, since they ar...
International audienceCredit institutions are interested in the refunding probability of a loan give...
The performance of many machine learning algorithms can be substantially improved with a proper disc...
This paper proposes a rule for optimizing a predictive discriminant function (PDF) in discriminant a...
For regulatory and interpretability reasons, the logistic regression is still widely used by financi...
This study analyzes the effect of discretization on classification of datasets including continuous ...
In this work, a new technique to define cut-points in the discretization process of a continuous att...
Very often statistical method or machine learning algorithms can handle discrete attributes only. An...
This paper presents a comparison of the efficacy of unsupervised and supervised discretization metho...