An application of nonparametric predictive inference for multinomial data (NPI) to classification tasks is presented. This model is applied to an established procedure for building classification trees using imprecise probabilities and uncertainty measures, thus far used only with the imprecise Dirichlet model (IDM), that is defined through the use of a parameter expressing previous knowledge. The accuracy of that procedure of classification has a significant dependence on the value of the parameter used when the IDM is applied. A detailed study involving 40 data sets shows that the procedure using the NPI model (which has no parameter dependence) obtains a better trade-off between accuracy and size of tree than does the procedure when the ...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
none2One of the current challenges in the field of data mining is to develop techniques to analyze u...
In this paper we present comparative study of two frequently used methods for prediction and classif...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
In probability and statistics, uncertainty is usually quantified using single-valued probabilities s...
Classification is the task of assigning a new instance to one of a set of predefined categories base...
Nonparametric Predictive Inference (NPI) is a general methodology to learn from data in the absence ...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
AbstractNonparametric predictive inference (NPI) is a general methodology to learn from data in the ...
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
The framework of this paper is classification and regression trees, also known as tree-based method...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
none2One of the current challenges in the field of data mining is to develop techniques to analyze u...
In this paper we present comparative study of two frequently used methods for prediction and classif...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
In probability and statistics, uncertainty is usually quantified using single-valued probabilities s...
Classification is the task of assigning a new instance to one of a set of predefined categories base...
Nonparametric Predictive Inference (NPI) is a general methodology to learn from data in the absence ...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
AbstractNonparametric predictive inference (NPI) is a general methodology to learn from data in the ...
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
Decision trees estimate prediction certainty using the class distribution in the leaf responsible fo...
The framework of this paper is classification and regression trees, also known as tree-based method...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
AbstractThis paper addresses the classification problem with imperfect data. More precisely, it exte...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
none2One of the current challenges in the field of data mining is to develop techniques to analyze u...
In this paper we present comparative study of two frequently used methods for prediction and classif...