International audienceWe address the problem of learning classifiers when observations have multiple views, some of which may not be observed for all examples. We assume the existence of view generating functions which may complete the missing views in an approximate way. This situation corresponds for example to learning text classifiers from multilingual collections where documents are not available in all languages. In that case, Machine Translation (MT) systems may be used to translate each document in the missing languages. We derive a generalization error bound for classifiers learned on examples with multiple artificially created views. Our result uncovers a trade-off between the size of the training set, the number of views, and the...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
International audienceWe address the problem of learning to rank documents in a multilingual context...
In many applications, observations are available with different views. This is, for example, the cas...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
International audienceIn this paper, we present a conditional GAN with two generators and a common d...
Multiview learning has been shown to be a natural and efficient framework for supervised or semi-sup...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
Multiview learning has been shown to be a natural and effi-cient framework for supervised or semi-su...
One underlying assumption of the conventional multi-view learning algorithms is that all examples ca...
abstract: Multi-view learning, a subfield of machine learning that aims to improve model performance...
As we all know, multi-view data is more expressive than single-view data and multi-label annotation ...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
International audienceWe address the problem of learning to rank documents in a multilingual context...
In many applications, observations are available with different views. This is, for example, the cas...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
International audienceIn this paper, we present a conditional GAN with two generators and a common d...
Multiview learning has been shown to be a natural and efficient framework for supervised or semi-sup...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
Multiview learning has been shown to be a natural and effi-cient framework for supervised or semi-su...
One underlying assumption of the conventional multi-view learning algorithms is that all examples ca...
abstract: Multi-view learning, a subfield of machine learning that aims to improve model performance...
As we all know, multi-view data is more expressive than single-view data and multi-label annotation ...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...
We propose a multi-view learning approach called co-labeling which is applicable for several machine...