International audienceWe address the problem of learning to rank documents in a multilingual context, when reference ranking information is only partially available. We propose a multiview learning approach to this semi-supervised ranking task, where the translation of a document in a given language is considered as a view of the document. Although both multiview and semi-supervised learning of classifiers have been studied extensively in recent years, their applicatin to the problem of ranking has received much less attention. We describe a semi-supervised multi-veiw ranking algorithm that exploits a global agreement between view-specific ranking functions on a set of unlabeled observations. We show that our proposed algorithm achieves sig...
International audienceIn subset ranking, the goal is to learn a ranking function that approximates a...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
Recently there has been a general direction in ranking algorithms that combine labeled and unlabeled...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
International audienceWe address the problem of learning classifiers when observations have multiple...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
Multiview learning has been shown to be a natural and efficient framework for supervised or semi-sup...
International audienceIn many applications, observations are available with different views. This is...
AbstractMany semi-supervised learning algorithms only consider the distribution of word frequency, i...
Multiview learning has been shown to be a natural and effi-cient framework for supervised or semi-su...
We propose a new multi-view clustering method which uses clustering results obtained on each view as...
Most photo sharing sites give their users the opportunity to manually label images. The labels colle...
Web search ranking models are learned from features origi-nated from different views or perspectives...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
International audienceIn subset ranking, the goal is to learn a ranking function that approximates a...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
Recently there has been a general direction in ranking algorithms that combine labeled and unlabeled...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
We investigate the problem of learning document classifiers in a multilingual setting, from collecti...
International audienceWe address the problem of learning classifiers when observations have multiple...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
Multiview learning has been shown to be a natural and efficient framework for supervised or semi-sup...
International audienceIn many applications, observations are available with different views. This is...
AbstractMany semi-supervised learning algorithms only consider the distribution of word frequency, i...
Multiview learning has been shown to be a natural and effi-cient framework for supervised or semi-su...
We propose a new multi-view clustering method which uses clustering results obtained on each view as...
Most photo sharing sites give their users the opportunity to manually label images. The labels colle...
Web search ranking models are learned from features origi-nated from different views or perspectives...
Multi-view learning makes use of diverse models arising from multiple sources of input or different ...
International audienceIn subset ranking, the goal is to learn a ranking function that approximates a...
Obtaining high-quality and up-to-date labeled data can be difficult in many real-world machine learn...
Recently there has been a general direction in ranking algorithms that combine labeled and unlabeled...