For semi-supervised techniques to be applied safely in practice we at least want methods to outperform their supervised counterparts. We study this question for classification using the well-known quadratic surrogate loss function. Unlike other approaches to semi-supervised learning, the procedure proposed in this work does not rely on assumptions that are not intrinsic to the classifier at hand. Using a projection of the supervised estimate onto a set of constraints imposed by the unlabeled data, we find we can safely improve over the supervised solution in terms of this quadratic loss. More specifically, we prove that, measured on the labeled and unlabeled training data, this semi-supervised procedure never gives a lower quadratic loss th...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
Transductive semi-supervised learning can only predict labels for unlabeled data appearing in traini...
Semi-supervised classification methods aim to exploit labelled and unlabelled examples to train a pr...
<p>For semi-supervised techniques to be applied safely in practice we at least want methods to outpe...
In many domains of science and society, the amount of data being gathered is increasing rapidly. To ...
In many domains of science and society, the amount of data being gathered is increasing rapidly. To ...
A rather simple semi-supervised version of the equally simple nearest mean classifier is presented. ...
Semi-supervised learning (SSL) concerns how to improve performance via the usage of unlabeled data. ...
Semi-supervised classification methods aim to exploit labelled and unlabelled examples to train a pr...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
In this dissertation, we consider semi-parametric estimation problems under semi-supervised (SS) set...
Major efforts have been made, mostly in the machine learning literature, to construct good predictor...
Date du colloque : 12/2008International audienceSemi-supervised classification methods aim to e...
Semi-supervised learning, which aims to construct learners that automatically exploit the large amou...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
Transductive semi-supervised learning can only predict labels for unlabeled data appearing in traini...
Semi-supervised classification methods aim to exploit labelled and unlabelled examples to train a pr...
<p>For semi-supervised techniques to be applied safely in practice we at least want methods to outpe...
In many domains of science and society, the amount of data being gathered is increasing rapidly. To ...
In many domains of science and society, the amount of data being gathered is increasing rapidly. To ...
A rather simple semi-supervised version of the equally simple nearest mean classifier is presented. ...
Semi-supervised learning (SSL) concerns how to improve performance via the usage of unlabeled data. ...
Semi-supervised classification methods aim to exploit labelled and unlabelled examples to train a pr...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
In this dissertation, we consider semi-parametric estimation problems under semi-supervised (SS) set...
Major efforts have been made, mostly in the machine learning literature, to construct good predictor...
Date du colloque : 12/2008International audienceSemi-supervised classification methods aim to e...
Semi-supervised learning, which aims to construct learners that automatically exploit the large amou...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
Improvement guarantees for semi-supervised classifiers can currently only be given under restrictive...
Transductive semi-supervised learning can only predict labels for unlabeled data appearing in traini...
Semi-supervised classification methods aim to exploit labelled and unlabelled examples to train a pr...