International audienceThe multiple-play recommender systems (RS) are RS which recommend several items to the users. RS are based on learning models in order to choose the items to recommend. Among these models, the bandit algorithms offer the advantage to learn and exploite the learnt elements at the same time. Current approaches require running as many instances of a bandit algorithm as there are items to recommend. As opposed to that, we handle all recommendations simultaneously, by a single instance of a bandit algorithm. We show on two benchmark datasets (Movielens and Jester) that our method, MPB (Multiple Plays Bandit), obtains a learning rate about thirteen times faster while obtaining equivalent click-through rates. We also show tha...
Dans cette thèse, nous étudions des problèmes de prise de décisions séquentielles dans lesquels, pou...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multip...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multip...
International audienceFor several web tasks such as ad placement or e-commerce, recommender systems ...
International audienceFor several web tasks such as ad placement or e-commerce, recommender systems ...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multipl...
In this PhD thesis, we study the optimization of recommender systems with the objective of providing...
National audienceLes systèmes de recommandation (SR) à tirages multiples font référence aux SR qui r...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Les systèmes de recommandation actuels ont besoin de recommander des objets pertinents aux utilisate...
International audienceNowadays, in most fields of activities, companies are strengthening their digi...
Dans cette thèse, nous étudions des problèmes de prise de décisions séquentielles dans lesquels, pou...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multip...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multip...
International audienceFor several web tasks such as ad placement or e-commerce, recommender systems ...
International audienceFor several web tasks such as ad placement or e-commerce, recommender systems ...
For several web tasks such as ad placement or e-commerce, recommender systems must recommend multipl...
In this PhD thesis, we study the optimization of recommender systems with the objective of providing...
National audienceLes systèmes de recommandation (SR) à tirages multiples font référence aux SR qui r...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Current recommender systems need to recommend items that are relevant to users (exploitation), but t...
Les systèmes de recommandation actuels ont besoin de recommander des objets pertinents aux utilisate...
International audienceNowadays, in most fields of activities, companies are strengthening their digi...
Dans cette thèse, nous étudions des problèmes de prise de décisions séquentielles dans lesquels, pou...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...
We tackle the online learning to rank problem of assigning L items to K predefined positions on a we...