International audienceIn the context of Active Learning for classification, the classification error depends on the joint distribution of samples and their labels which is initially unknown. The minimization of this error requires estimating this distribution. Online estimation of this distribution involves a trade-off between exploration and exploitation. This is a common problem in machine learning for which multi-armed bandit theory, building upon Optimism in the Face of Uncertainty, has been proven very efficient these last years. We introduce two novel algorithms that use Optimism in the Face of Uncertainty along with Gaussian Processes for the Active Learning problem. The evaluation lead on real world datasets shows that these new alg...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
For many supervised learning tasks, the cost of acquiring training data is dominated by the cost of ...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
Abstract. In the context of Active Learning for classification, the classi-fication error depends on...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Active Learning is the problem of interactively constructing the training set used in classifica-tio...
La classification se base sur un jeu de données étiquetées par un expert. Plus le jeu de données est...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active learning is one form of supervised machine learning. In supervised learning, a set of labeled...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
For many supervised learning tasks, the cost of acquiring training data is dominated by the cost of ...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
International audienceIn the context of Active Learning for classification, the classification error...
Abstract. In the context of Active Learning for classification, the classi-fication error depends on...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
Active Learning is the problem of interactively constructing the training set used in classifica-tio...
La classification se base sur un jeu de données étiquetées par un expert. Plus le jeu de données est...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active learning is one form of supervised machine learning. In supervised learning, a set of labeled...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
For many supervised learning tasks, the cost of acquiring training data is dominated by the cost of ...
This thesis focuses on machine learning for data classification. To reduce the labelling cost, activ...