It sometimes happens (for instance in case control studies) that a classifier is trained on a data set that does not reflect the true a priori probabilities of the target classes on real-world data. This may have a negative effect on the classification accuracy obtained on the real-world data set, especially when the classifier's decisions are based on the a posteriori probabilities of class membership. Indeed, in this case, the trained classifier provides estimates of the a posteriori probabilities that are not valid for this real-world data set (they rely on the a priori probabilities of the training set). Applying the classifier as is (without correcting its outputs with respect to these new conditions) on this new data set may thus be s...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
International audienceA new supervised learning algorithm using naïve Bayesian classifier is present...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
It sometimes happens (for instance in case control studies) that a classifier is trained on a data s...
It sometimes happens, for instance in case-control studies, that a classifier is trained on a data ...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
In this paper, we provide a straightforward proof of an important, but nevertheless little known, re...
We introduce Fisher consistency in the sense of unbiasedness as a criterion to distinguish potential...
We critically re-examine the Saerens-Latinne-Decaestecker (SLD) algorithm, a well-known method for e...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Objective: Successful use of classifiers that learn to make decisions from a set of patient examples...
Class membership probability estimates are important for many applications of data mining in which c...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
This research allows one to take an existing pattern classifier (software/hardware system) and enhan...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
International audienceA new supervised learning algorithm using naïve Bayesian classifier is present...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...
It sometimes happens (for instance in case control studies) that a classifier is trained on a data s...
It sometimes happens, for instance in case-control studies, that a classifier is trained on a data ...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
In this paper, we provide a straightforward proof of an important, but nevertheless little known, re...
We introduce Fisher consistency in the sense of unbiasedness as a criterion to distinguish potential...
We critically re-examine the Saerens-Latinne-Decaestecker (SLD) algorithm, a well-known method for e...
Multi-class classification methods that produce sets of probabilistic classifiers, such as ensemble ...
Objective: Successful use of classifiers that learn to make decisions from a set of patient examples...
Class membership probability estimates are important for many applications of data mining in which c...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
This research allows one to take an existing pattern classifier (software/hardware system) and enhan...
Machine learning classifiers typically provide scores for the different classes. These scores are su...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
International audienceA new supervised learning algorithm using naïve Bayesian classifier is present...
In classification problems, isotonic regression has been commonly used to map the prediction scores ...