A selective sampling algorithm is a learning algorithm for classification that, based on the past observed data, decides whether to ask the label of each new instance to be classified. In this paper, we introduce a general technique for turning linear-threshold classification algorithms from the general additive family into randomized selective sampling algorithms. For the most popular algorithms in this family we derive mistake bounds that hold for individual sequences of examples. These bounds show that our semi-supervised algorithms can achieve, on average, the same accuracy as that of their fully supervised counterparts, but using fewer labels. Our theoretical results are corroborated by a number of experiments on real-world text...
We introduce a computationally effective algorithm for a linear model selection consisting of three ...
The classification learning task requires selection of a subset of features to represent patterns to...
We derive here new generalization bounds, based on Rademacher Complexity theory, for model selection...
A selective sampling algorithm is a learning algorithm for classification that, based on the past ob...
A selective sampling algorithm is a learning algorithm for classification that, based on the past o...
Online selective sampling algorithms learn to perform binary classification, and additionally they d...
We introduce efficient margin-based algorithms for selective sampling and filtering in binary classi...
Abstract—Traditional online learning algorithms are designed for vector data only, which assume that...
Most positive and unlabeled data is subject to selection biases. The labeled examples can, for examp...
Abstract. Most existing inductive learning algorithms work under the assumption that their training ...
. Most existing inductive learning algorithms assume the availability of a training set of labeled ...
Selective sampling is an active variant of online learning in which the learner is allowed to adapti...
Une des objectifs poursuivis par la recherche en apprentissage automatique est la construction de bo...
Recently there has been much work on selec-tive sampling, an online active learning setting, in whic...
Une des objectifs poursuivis par la recherche en apprentissage automatique est la construction de bo...
We introduce a computationally effective algorithm for a linear model selection consisting of three ...
The classification learning task requires selection of a subset of features to represent patterns to...
We derive here new generalization bounds, based on Rademacher Complexity theory, for model selection...
A selective sampling algorithm is a learning algorithm for classification that, based on the past ob...
A selective sampling algorithm is a learning algorithm for classification that, based on the past o...
Online selective sampling algorithms learn to perform binary classification, and additionally they d...
We introduce efficient margin-based algorithms for selective sampling and filtering in binary classi...
Abstract—Traditional online learning algorithms are designed for vector data only, which assume that...
Most positive and unlabeled data is subject to selection biases. The labeled examples can, for examp...
Abstract. Most existing inductive learning algorithms work under the assumption that their training ...
. Most existing inductive learning algorithms assume the availability of a training set of labeled ...
Selective sampling is an active variant of online learning in which the learner is allowed to adapti...
Une des objectifs poursuivis par la recherche en apprentissage automatique est la construction de bo...
Recently there has been much work on selec-tive sampling, an online active learning setting, in whic...
Une des objectifs poursuivis par la recherche en apprentissage automatique est la construction de bo...
We introduce a computationally effective algorithm for a linear model selection consisting of three ...
The classification learning task requires selection of a subset of features to represent patterns to...
We derive here new generalization bounds, based on Rademacher Complexity theory, for model selection...