International audienceLearning multiple related tasks from data simultaneously can improve predictive performance relative to learning these tasks independently. In this paper we propose a novel multi-task learning algorithm called MT-Adaboost: it extends Adaboost algorithm to the multi-task setting; it uses as multi-task weak classifier a multi-task decision stump. This allows to learn different dependencies between tasks for different regions of the learning space. Thus, we relax the conventional hypothesis that tasks behave similarly in the whole learning space. Moreover, MT-Adaboost can learn multiple tasks without imposing the constraint of sharing the same label set and/or examples between tasks. A theoretical analysis is derived from...
http://jmlr.csail.mit.edu/papers/v13/benbouzid12a.htmlThe MultiBoost package provides a fast C++ imp...
Multi-task learning is a learning paradigm that improves the performance of "related" task...
This paper explains how to improve social media information extraction using multi-task multi-datase...
International audienceLearning multiple related tasks from data simultaneously can improve predictiv...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Apprendre des tâches simultanément peut améliorer la performance de prédiction par rapport à l'appre...
Multitask Learning is an approach to inductive transfer that improves learning for one task by using...
International audienceMulti-label decision procedures are the target of the supervised learning algo...
International audienceThis work aims to contribute to our understanding of when multi-task learning ...
An important problem in statisti al ma hine learning is how to ee tively model the predi tions of mu...
International audienceMulti-label decision procedures are the target of the supervised learning algo...
Sharing information between multiple tasks enables algorithms to achieve good generalization perform...
http://jmlr.csail.mit.edu/papers/v13/benbouzid12a.htmlThe MultiBoost package provides a fast C++ imp...
Multi-task learning is a learning paradigm that improves the performance of "related" task...
This paper explains how to improve social media information extraction using multi-task multi-datase...
International audienceLearning multiple related tasks from data simultaneously can improve predictiv...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Learning multiple related tasks jointly by exploiting their underlying shared knowledge can improve ...
Apprendre des tâches simultanément peut améliorer la performance de prédiction par rapport à l'appre...
Multitask Learning is an approach to inductive transfer that improves learning for one task by using...
International audienceMulti-label decision procedures are the target of the supervised learning algo...
International audienceThis work aims to contribute to our understanding of when multi-task learning ...
An important problem in statisti al ma hine learning is how to ee tively model the predi tions of mu...
International audienceMulti-label decision procedures are the target of the supervised learning algo...
Sharing information between multiple tasks enables algorithms to achieve good generalization perform...
http://jmlr.csail.mit.edu/papers/v13/benbouzid12a.htmlThe MultiBoost package provides a fast C++ imp...
Multi-task learning is a learning paradigm that improves the performance of "related" task...
This paper explains how to improve social media information extraction using multi-task multi-datase...