A new simple scoring technique is developed in a binary supervised classification context when only a few observations areavailable. It consists in two steps: in the first one partial scores are obtained, one for each predictor, either categorical or continuous. Each partial score is a discrete variable with 7 values ranging from -3 to 3, based upon an empirical comparison of the distributions for each class. In a second step the partial scores are added and standardised into a global score, which allows a decision rule.This simple technique is successfully compared with classical supervised techniques for a classical benchmark and has been proved to be especially well fitted in an industrial problem
Binary classification is one of the most frequent studies in applied machine learning problems in va...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
In this study, an approach is being proposed which will predict the output of an observation based o...
International audienceThe goal of classifier combination can be briefly stated as combining the deci...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
We present a Bayesian method for building scoring systems, which are linear models with coefficients...
We consider a population partitioned in several classes, a priori identified by a qualitative charac...
© Published under licence by IOP Publishing Ltd. An ABC-method (Accuracy Binary Classifier) for a mo...
Abstract. Generative score spaces provide a principled method to exploit generative information, e.g...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
We address the general problem of finding suitable evalu-ation measures for classification systems. ...
International audienceIn this paper, a new supervised classification method dedicated to binary pred...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
Binary classification is one of the most frequent studies in applied machine learning problems in va...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...
In this study, an approach is being proposed which will predict the output of an observation based o...
International audienceThe goal of classifier combination can be briefly stated as combining the deci...
The problem of ranking arises ubiquitously in almost every aspect of life, and in particular in Mach...
We present a Bayesian method for building scoring systems, which are linear models with coefficients...
We consider a population partitioned in several classes, a priori identified by a qualitative charac...
© Published under licence by IOP Publishing Ltd. An ABC-method (Accuracy Binary Classifier) for a mo...
Abstract. Generative score spaces provide a principled method to exploit generative information, e.g...
Variable selection is an essential tool for gaining knowledge on a problem or phenomenon, by identif...
We address the general problem of finding suitable evalu-ation measures for classification systems. ...
International audienceIn this paper, a new supervised classification method dedicated to binary pred...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
Binary classification is one of the most frequent studies in applied machine learning problems in va...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
In this paper we examine some nonparametric evaluation methods to compare the prediction capability ...