In this work, we study recommendation systems modelled as contextual multi-armed bandit (MAB) problems. We propose a graph-based recommendation system that learns and exploits the geometry of the user space to create meaningful clusters in the user domain. This reduces the dimensionality of the recommendation problem while preserving the accuracy of MAB. We then study the effect of graph sparsity and clusters size on the MAB performance and provide exhaustive simulation results both in synthetic and in real-case datasets. Simulation results show improvements with respect to state-of-the-art MAB algorithms
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Recommender systems have been intensively used to create personalised profiles, which enhance the us...
We study a type of recommendation systems problem, in which the system must be able to cover as many...
We study identifying user clusters in contextual multi-armed bandits (MAB). Contextual MAB is an eff...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
Classical collaborative filtering, and content-based filtering methods try to learn a static recomme...
Multi-armed bandit problems formalize the exploration-exploitation trade-offs arising in several ind...
With the rapid growth in velocity and volume, streaming data compels decision support systems to pre...
Multi-armed bandit problems formalize the exploration-exploitation trade-offs arising in several ind...
Smooth functions on graphs have wide applications in man-ifold and semi-supervised learning. In this...
Smooth functions on graphs have wide applications in man-ifold and semi-supervised learning. In this...
Recommender system has been a persistent research goal for decades, which aims at recommending suita...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Recommender systems have been intensively used to create personalised profiles, which enhance the us...
We study a type of recommendation systems problem, in which the system must be able to cover as many...
We study identifying user clusters in contextual multi-armed bandits (MAB). Contextual MAB is an eff...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
Classical collaborative filtering, and content-based filtering methods try to learn a static recomme...
Multi-armed bandit problems formalize the exploration-exploitation trade-offs arising in several ind...
With the rapid growth in velocity and volume, streaming data compels decision support systems to pre...
Multi-armed bandit problems formalize the exploration-exploitation trade-offs arising in several ind...
Smooth functions on graphs have wide applications in man-ifold and semi-supervised learning. In this...
Smooth functions on graphs have wide applications in man-ifold and semi-supervised learning. In this...
Recommender system has been a persistent research goal for decades, which aims at recommending suita...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
International audienceSmooth functions on graphs have wide applications in manifold and semi-supervi...
As a pivotal tool to alleviate the information overload problem, recommender systems aim to predict ...
Recommender systems have been intensively used to create personalised profiles, which enhance the us...