Classifiers that aim at doing credible predictions should rely on carefully elicited prior knowledge. Often this is not available so they should start learning from data in condition of near-ignorance. This paper shows empirically, on an agricultural data set, that established methods of classification do not always adhere to this principle. Traditional ways to represent prior ignorance are shown to have an overwhelming weight compared to the information in the data, producing overconfident predictions. This point is crucial for problems, such as environmental ones, where prior knowledge is often scarce and even the data may not be known precisely. Credal classification, and in particular the naive credal classifier, are proposed as more fa...
Abstract. Credal Decision Trees (CDTs) are algorithms to design clas-sifiers based on imprecise prob...
Cropping system models are widely used tools for simulating the growth and development of crops at f...
The effect of errors in ground truth on the estimated thematic accuracy of a classifier is considere...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
We present TANC, a TAN classifier (tree-augmented naive) based on imprecise probabilities. TANC mode...
AbstractWe present TANC, a TAN classifier (tree-augmented naive) based on imprecise probabilities. T...
The naive credal classifier extends the classical naive Bayes classifier to imprecise probabilities,...
AbstractPredictions made by imprecise-probability models are often indeterminate (that is, set-value...
Bayesian model averaging (BMA) is the state of the art approach for overcoming model uncertainty. Ye...
We present a variation of a method of classification based in uncertainty on credal set. Similarly ...
Modeling and managing uncertainty in the classification problem remains an important and interesting...
This paper reports on an investigation in classification technique employed to classify noised and u...
We present a credal classifier for multilabel data. The model generalizes the naive credal classifie...
JNCC2 is open source; it is hence freely available together with manual, sources and javadoc documen...
International audienceIn some sensitive domains where data imperfections are present, standard class...
Abstract. Credal Decision Trees (CDTs) are algorithms to design clas-sifiers based on imprecise prob...
Cropping system models are widely used tools for simulating the growth and development of crops at f...
The effect of errors in ground truth on the estimated thematic accuracy of a classifier is considere...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
We present TANC, a TAN classifier (tree-augmented naive) based on imprecise probabilities. TANC mode...
AbstractWe present TANC, a TAN classifier (tree-augmented naive) based on imprecise probabilities. T...
The naive credal classifier extends the classical naive Bayes classifier to imprecise probabilities,...
AbstractPredictions made by imprecise-probability models are often indeterminate (that is, set-value...
Bayesian model averaging (BMA) is the state of the art approach for overcoming model uncertainty. Ye...
We present a variation of a method of classification based in uncertainty on credal set. Similarly ...
Modeling and managing uncertainty in the classification problem remains an important and interesting...
This paper reports on an investigation in classification technique employed to classify noised and u...
We present a credal classifier for multilabel data. The model generalizes the naive credal classifie...
JNCC2 is open source; it is hence freely available together with manual, sources and javadoc documen...
International audienceIn some sensitive domains where data imperfections are present, standard class...
Abstract. Credal Decision Trees (CDTs) are algorithms to design clas-sifiers based on imprecise prob...
Cropping system models are widely used tools for simulating the growth and development of crops at f...
The effect of errors in ground truth on the estimated thematic accuracy of a classifier is considere...