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 ...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
Classification trees based on imprecise probabilities provide an advancement of classical classifica...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
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 ...
AbstractNonparametric predictive inference (NPI) is a general methodology to learn from data in the ...
In probability and statistics, uncertainty is usually quantified using single-valued probabilities s...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
The nonparametric predictive inference (NPI) approach for competing risks data has recently been pre...
This paper introduces a novel method for asset and option trading in a binomial scenario. This meth...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
In finance, inferences about future asset returns are typically quantified with the use of parametri...
In data mining, classification is used to assign a new observation to one of a set of predefined cla...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
Classification trees based on imprecise probabilities provide an advancement of classical classifica...
An application of nonparametric predictive inference for multinomial data (NPI) to classification ta...
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 ...
AbstractNonparametric predictive inference (NPI) is a general methodology to learn from data in the ...
In probability and statistics, uncertainty is usually quantified using single-valued probabilities s...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
The nonparametric predictive inference (NPI) approach for competing risks data has recently been pre...
This paper introduces a novel method for asset and option trading in a binomial scenario. This meth...
1 Introduction Decision tree algorithms (e.g., [14, 3]) have to solve two distinct problems: they ne...
In finance, inferences about future asset returns are typically quantified with the use of parametri...
In data mining, classification is used to assign a new observation to one of a set of predefined cla...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
Decision Tree Induction (DTI) is a tool to induce a classification or regression model from (usually...
Classification trees based on imprecise probabilities provide an advancement of classical classifica...