International audienceWe study Recommender Systems in the context where they suggest a list of items to users. Several crucial issues are raised in such a setting: first, identify the relevant items to recommend; second, account for the feedback given by the user after he clicked and rated an item; third, since new feedback arrive into the system at any moment, incorporate such information to improve future recommendations. In this paper, we take these three aspects into consideration and present an approach handling click/no-click feedback information. Experiments on real-world datasets show that our approach outperforms state of the art algorithms
The recent development of online recommender systems has a focus on collaborative ranking from impli...
Recommender systems are of vital importance, in the era of the Web, to address the problem of inform...
In this paper, we propose a technique that uses multimodal interactions of users to generate a more ...
International audienceWe study Recommender Systems in the context where they suggest a list of items...
The two main tasks addressed by collaborative filtering approaches are rating prediction and ranking...
There are two primary ways of collecting preferences of users towards items. In the first method, us...
In online recommender systems, we use computerized algorithms to present articles targeted at the pr...
In this thesis we investigate implicit feedback techniques for real-world recommender systems. Howev...
Can implicit feedback substitute for explicit ratings in recommender systems? If so, we could avoid ...
International audienceThis work presents a Recommender System (RS) that relies on distributed recomm...
This thesis is dedicated to the study of Recommendation Systems under a sequential setting, where th...
Whenever access to information is mediated by a computer, we can easily record how users respond to ...
International audienceRecommender Systems (RS) aim at suggesting to users one or several items in wh...
This thesis is dedicated to the study of Recommendation Systems for implicit feedback (clicks) mostl...
This paper presents a decision theoretic ranking system that incorporates both explicit and implicit...
The recent development of online recommender systems has a focus on collaborative ranking from impli...
Recommender systems are of vital importance, in the era of the Web, to address the problem of inform...
In this paper, we propose a technique that uses multimodal interactions of users to generate a more ...
International audienceWe study Recommender Systems in the context where they suggest a list of items...
The two main tasks addressed by collaborative filtering approaches are rating prediction and ranking...
There are two primary ways of collecting preferences of users towards items. In the first method, us...
In online recommender systems, we use computerized algorithms to present articles targeted at the pr...
In this thesis we investigate implicit feedback techniques for real-world recommender systems. Howev...
Can implicit feedback substitute for explicit ratings in recommender systems? If so, we could avoid ...
International audienceThis work presents a Recommender System (RS) that relies on distributed recomm...
This thesis is dedicated to the study of Recommendation Systems under a sequential setting, where th...
Whenever access to information is mediated by a computer, we can easily record how users respond to ...
International audienceRecommender Systems (RS) aim at suggesting to users one or several items in wh...
This thesis is dedicated to the study of Recommendation Systems for implicit feedback (clicks) mostl...
This paper presents a decision theoretic ranking system that incorporates both explicit and implicit...
The recent development of online recommender systems has a focus on collaborative ranking from impli...
Recommender systems are of vital importance, in the era of the Web, to address the problem of inform...
In this paper, we propose a technique that uses multimodal interactions of users to generate a more ...