Accurate calibration of probabilistic predictive models learned is critical for many practical predic-tion and decision-making tasks. There are two main categories of methods for building calibrated classifiers. One approach is to develop methods for learning probabilistic models that are well-calibrated, ab initio. The other approach is to use some post-processing methods for transforming the output of a classifier to be well calibrated, as for example histogram binning, Platt scaling, and isotonic regression. One advantage of the post-processing approach is that it can be applied to any existing probabilistic classification model that was constructed using any machine-learning method. In this paper, we first introduce two measures for eva...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
When applying supervised machine learning algorithms to classification, the classical goal is to rec...
Class membership probability estimates are important for many applications of data mining in which c...
A set of probabilistic predictions is well calibrated if the events that are predicted to occur with...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
Learning probabilistic predictive models that are well calibrated is critical for many prediction an...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
For many applications of probabilistic classifiers it is important that the predicted confidence vec...
Many applications for classification methods not only require high accuracy but also reliable estima...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Calibration of machine learning classifiers is necessary to obtain reliable and interpretable predic...
Predicting unknown and unobserved events is a common task in many domains. Mathematically, the uncer...
International audienceEvidential calibration methods of binary classifiers improve upon probabilisti...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
When applying supervised machine learning algorithms to classification, the classical goal is to rec...
Class membership probability estimates are important for many applications of data mining in which c...
A set of probabilistic predictions is well calibrated if the events that are predicted to occur with...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
Learning probabilistic predictive models that are well calibrated is critical for many prediction an...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
Calibrating a classification system consists in transforming the output scores, which somehow state t...
For many applications of probabilistic classifiers it is important that the predicted confidence vec...
Many applications for classification methods not only require high accuracy but also reliable estima...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Calibration of machine learning classifiers is necessary to obtain reliable and interpretable predic...
Predicting unknown and unobserved events is a common task in many domains. Mathematically, the uncer...
International audienceEvidential calibration methods of binary classifiers improve upon probabilisti...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
When applying supervised machine learning algorithms to classification, the classical goal is to rec...
Class membership probability estimates are important for many applications of data mining in which c...