In this thesis, we address the scalability problem of recommender systems. We propose accu rate and scalable algorithms. We first consider the case of matrix factorization techniques in a dynamic context, where new ratings..are continuously produced. ln such case, it is not possible to have an up to date model, due to the incompressible time needed to compute it. This happens even if a distributed technique is used for matrix factorization. At least, the ratings produced during the model computation will be missing. Our solution reduces the loss of the quality of the recommendations over time, by introducing some stable biases which track users' behavior deviation. These biases are continuously updated with the new ratings, in order to main...
The purpose of recommender systems is to filter information unseen by a user to predict whether a us...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
Recommender systems are widely used to achieve a constantly growing variety of services. Alongside w...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
Cette thèse s'intéresse à la problématique de passage à l'échelle des systèmes de recommandations. D...
The context of this thesis work is dynamic recommendation. Recommendation is the action,for an intel...
La recommandation de points d’intérêts (POI) est une composante essentielle des réseaux sociaux géol...
Recommender Systems aim at pre-selecting and presenting first the information in which users may be ...
The development of internet engendred an important proliferation of items. Thus, users are often ove...
In this PhD thesis, we study the optimization of recommender systems with the objective of providing...
With the overwhelming online products available in recent years, there is an increasing need to filt...
International audienceThe main target of Recommender Systems (RS) is to propose to users one or seve...
This thesis, written in a company as a CIFRE thesis in the company fifty-five, studies recommender s...
Dans cette thèse, nous nous intéressons à l'étude des algorithmes d'apprentissage qui fournissent un...
This thesis focuses on large scale optimization problems and especially on matrix factorization meth...
The purpose of recommender systems is to filter information unseen by a user to predict whether a us...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
Recommender systems are widely used to achieve a constantly growing variety of services. Alongside w...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
Cette thèse s'intéresse à la problématique de passage à l'échelle des systèmes de recommandations. D...
The context of this thesis work is dynamic recommendation. Recommendation is the action,for an intel...
La recommandation de points d’intérêts (POI) est une composante essentielle des réseaux sociaux géol...
Recommender Systems aim at pre-selecting and presenting first the information in which users may be ...
The development of internet engendred an important proliferation of items. Thus, users are often ove...
In this PhD thesis, we study the optimization of recommender systems with the objective of providing...
With the overwhelming online products available in recent years, there is an increasing need to filt...
International audienceThe main target of Recommender Systems (RS) is to propose to users one or seve...
This thesis, written in a company as a CIFRE thesis in the company fifty-five, studies recommender s...
Dans cette thèse, nous nous intéressons à l'étude des algorithmes d'apprentissage qui fournissent un...
This thesis focuses on large scale optimization problems and especially on matrix factorization meth...
The purpose of recommender systems is to filter information unseen by a user to predict whether a us...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
Recommender systems are widely used to achieve a constantly growing variety of services. Alongside w...