One of the advantages of supervised learning is that the final error metric is available during training. For classifiers, the algorithm can directly reduce the number of misclassifications on the training set. Unfortunately, when modeling human learning or constructing classifiers for autonomous robots, supervisory labels are often not available or too expensive. In this paper we show that we can substitute for the labels by making use of structure between the pattern distributions to different sensory modalities. We show that minimizing the disagreement between the outputs of networks processing patterns from these different modalities is a sensible approximation to minimizing the number of misclassifications in each modality, and leads t...
Training data for segmentation tasks are often available only on a small scale. Transferring learned...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
In semi-supervised learning (SSL), a common practice is to learn consistent information from unlabel...
This paper presents a new approach to identifying and eliminating mislabeled training instances for ...
One of the key ideas in both robotics and neuroscience is that complex behaviour can arise from the ...
International audienceThis paper investigates a new approach for training discriminant classifiers w...
In the supervised learning the data are divided into training set and unclassified set. A classifier...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
AbstractSemi-supervised learning is a machine learning approach which is able to employ both labeled...
Recent advances in Artificial Intelligence (AI) have been built on large scale datasets. These advan...
Knowing how to exploit unlabeled data is a fundamental problem in machine learning. This dissertatio...
AbstractThere has been much interest in applying techniques that incorporate knowledge from unlabell...
Supervised machine learning addresses the problem of learning classifiers or function approximators ...
98 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.With the growing use of comput...
Training data for segmentation tasks are often available only on a small scale. Transferring learned...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
In semi-supervised learning (SSL), a common practice is to learn consistent information from unlabel...
This paper presents a new approach to identifying and eliminating mislabeled training instances for ...
One of the key ideas in both robotics and neuroscience is that complex behaviour can arise from the ...
International audienceThis paper investigates a new approach for training discriminant classifiers w...
In the supervised learning the data are divided into training set and unclassified set. A classifier...
This thesis focuses on how unlabeled data can improve supervised learning classi-fiers in all contex...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
AbstractSemi-supervised learning is a machine learning approach which is able to employ both labeled...
Recent advances in Artificial Intelligence (AI) have been built on large scale datasets. These advan...
Knowing how to exploit unlabeled data is a fundamental problem in machine learning. This dissertatio...
AbstractThere has been much interest in applying techniques that incorporate knowledge from unlabell...
Supervised machine learning addresses the problem of learning classifiers or function approximators ...
98 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.With the growing use of comput...
Training data for segmentation tasks are often available only on a small scale. Transferring learned...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
In semi-supervised learning (SSL), a common practice is to learn consistent information from unlabel...