AbstractPredictions made by imprecise-probability models are often indeterminate (that is, set-valued). Measuring the quality of an indeterminate prediction by a single number is important to fairly compare different models, but a principled approach to this problem is currently missing. In this paper we derive, from a set of assumptions, a metric to evaluate the predictions of credal classifiers. These are supervised learning models that issue set-valued predictions. The metric turns out to be made of an objective component, and another that is related to the decision-maker’s degree of risk aversion to the variability of predictions. We discuss when the measure can be rendered independent of such a degree, and provide insights as to how th...
Modeling and managing uncertainty in the classification problem remains an important and interesting...
Abstract Background Many measures of prediction accuracy have been developed. However, the most popu...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Bayesian model averaging (BMA) is the state of the art approach for overcoming model uncertainty. Ye...
Classifiers that are deployed in the field can be used and evaluated in ways that were not anticipat...
The naive credal classifier extends the classical naive Bayes classifier to imprecise probabilities,...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
Classifiers that aim at doing credible predictions should rely on carefully elicited prior knowledge...
International audienceUnbiased assessment of the predictivity of models learnt by supervised machine...
Abstract. In this paper we present lessons learned in the Evaluating Predictive Uncertainty Challeng...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
Modeling and managing uncertainty in the classification problem remains an important and interesting...
Abstract Background Many measures of prediction accuracy have been developed. However, the most popu...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Bayesian model averaging (BMA) is the state of the art approach for overcoming model uncertainty. Ye...
Classifiers that are deployed in the field can be used and evaluated in ways that were not anticipat...
The naive credal classifier extends the classical naive Bayes classifier to imprecise probabilities,...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
International audienceIn this paper we present a new credal classification rule (CCR) based on belie...
In cases of uncertainty, a multi-class classifier preferably returns a set of candidate classes inst...
Classifiers that aim at doing credible predictions should rely on carefully elicited prior knowledge...
International audienceUnbiased assessment of the predictivity of models learnt by supervised machine...
Abstract. In this paper we present lessons learned in the Evaluating Predictive Uncertainty Challeng...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
Classifiers sometimes return a set of values of the class variable since there is not enough inform...
Modeling and managing uncertainty in the classification problem remains an important and interesting...
Abstract Background Many measures of prediction accuracy have been developed. However, the most popu...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...