International audienceRecommendation plays a key role in e-commerce and in the entertainment industry. We propose to consider successive recommendations to users under the form of graphs of recommendations. We give models for this representation. Motivated by the growing interest for algorithmic transparency, we then propose a first application for those graphs, that is the potential detection of introduced recommendation bias by the service provider. This application relies on the analysis of the topology of the extracted graph for a given user; we propose a notion of recommendation coherence with regards to the topological proximity of recommended items (under the measure of items' k-closest neighbors, reminding the "small-world" model by...
International audienceTop-N recommendation systems are important because they influence user choices...
To make accurate recommendations, recommendation systems currently require more data about a custome...
Abstract. In this paper we investigate the users ’ recommendation net-works based on the large data ...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
The role of recommendation algorithms in online user confinement is at the heart of a fast-growing l...
The role of recommendation algorithms in online user confinement is at the heart of a fast-growing l...
International audience— The Youtube recommendation is one the most important view source of a video....
In this work, we study recommendation systems modelled as contextual multi-armed bandit (MAB) proble...
Abstract. We present a novel framework for studying recommendation algorithms in terms of the ‘jumps...
Recommender Systems are intelligent machine learning systems that help customers discover a ranked s...
International audienceRecommender systems provide users with pertinent resources according to their ...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
Recommender systems automate the process of recommending products and services to customers based on...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
International audienceTop-N recommendation systems are important because they influence user choices...
To make accurate recommendations, recommendation systems currently require more data about a custome...
Abstract. In this paper we investigate the users ’ recommendation net-works based on the large data ...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
The role of recommendation algorithms in online user confinement is at the heart of a fast-growing l...
The role of recommendation algorithms in online user confinement is at the heart of a fast-growing l...
International audience— The Youtube recommendation is one the most important view source of a video....
In this work, we study recommendation systems modelled as contextual multi-armed bandit (MAB) proble...
Abstract. We present a novel framework for studying recommendation algorithms in terms of the ‘jumps...
Recommender Systems are intelligent machine learning systems that help customers discover a ranked s...
International audienceRecommender systems provide users with pertinent resources according to their ...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
Recommender systems automate the process of recommending products and services to customers based on...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
International audienceTop-N recommendation systems are important because they influence user choices...
To make accurate recommendations, recommendation systems currently require more data about a custome...
Abstract. In this paper we investigate the users ’ recommendation net-works based on the large data ...