International audienceIn supervised classification, the learning process typically trains a classifier to optimize the accuracy of classifying data into the classes that appear in the learning set, and only them. While this framework fits many use cases, there are situations where the learning process is knowingly performed using a learning set that only represents the data that have been observed so far among a virtually unconstrained variety of possible samples. It is then crucial to define a classifier which has the ability to reject a sample, i.e., to classify it into a rejection class that has not been yet defined. Although obvious solutions can add this ability a posteriori to a classifier that has been learned classically, a better a...
Machine learning models always make a prediction, even when it is likely to be inaccurate. This beha...
Abstract. We present prototype-based classification schemes, e. g. learn-ing vector quantization, wi...
Classification models usually make predictions on the basis of training data. If the training data i...
International audienceIn supervised classification, the learning process typically trains a classifi...
International audienceIn supervised classification, the learning process typically trains a classifi...
International audienceIn supervised classification, the learning process typically trains a classifi...
Classifier performance can be severely affected when new unseen classes are present, or the conditio...
Due to intuitive training algorithms and model representation, prototype-based models are popular in...
Fischer L, Hammer B, Wersing H. Efficient rejection strategies for prototype-based classification. N...
Abstract. In this contribution, we focus on reject options for prototype-based classifiers, and we p...
The interest of reject for classifier optimization has been shown many times. The diversity of the a...
In this paper we are interested in classification problems with a performance constraint on error pr...
Abstract. Reject option is a technique used to improve classifier’s reliability in decision support ...
Classification Abstract — In this paper we are interested in classification problems with a performa...
Abstract. Classification with rejection is well understood for classi-fiers which provide explicit c...
Machine learning models always make a prediction, even when it is likely to be inaccurate. This beha...
Abstract. We present prototype-based classification schemes, e. g. learn-ing vector quantization, wi...
Classification models usually make predictions on the basis of training data. If the training data i...
International audienceIn supervised classification, the learning process typically trains a classifi...
International audienceIn supervised classification, the learning process typically trains a classifi...
International audienceIn supervised classification, the learning process typically trains a classifi...
Classifier performance can be severely affected when new unseen classes are present, or the conditio...
Due to intuitive training algorithms and model representation, prototype-based models are popular in...
Fischer L, Hammer B, Wersing H. Efficient rejection strategies for prototype-based classification. N...
Abstract. In this contribution, we focus on reject options for prototype-based classifiers, and we p...
The interest of reject for classifier optimization has been shown many times. The diversity of the a...
In this paper we are interested in classification problems with a performance constraint on error pr...
Abstract. Reject option is a technique used to improve classifier’s reliability in decision support ...
Classification Abstract — In this paper we are interested in classification problems with a performa...
Abstract. Classification with rejection is well understood for classi-fiers which provide explicit c...
Machine learning models always make a prediction, even when it is likely to be inaccurate. This beha...
Abstract. We present prototype-based classification schemes, e. g. learn-ing vector quantization, wi...
Classification models usually make predictions on the basis of training data. If the training data i...