Abstract — Recommendation systems take advantage of products and users information in order to propose items to targeted consumers. Collaborative recommendation systems, content-based recommendation systems and a few hybrid systems have been developed. We propose a dynamic and adaptive framework to overcome the usual issues of nowa-days systems. We present a method based on adaptation in time in order to provide recommendations in phase with the present instant. The system includes a dynamic adaptation to enhance the accuracy of rating predictions by applying a new similarity measure. We did several experiments on films data from Vodkaster, showing that systems incorporat-ing dynamic adaptation improve significantly the quality of recommend...
In the field of artificial intelligence, recommender systems are methods for predicting the relevanc...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
The aim of a recommender system is filtering the enormous quantity of information to obtain useful i...
International audienceRecommendation systems take advantage of products and users information in ord...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
Recommendation systems (RS) take advan-tage of products and users information in order to propose it...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
Conventional recommendation models often use the user-item interaction matrix (e.g. ratings) to pred...
In a period of time in which the content available through the Internet increases exponentially and...
Recommendation systems manage information overload in order to present personalized content to users...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
Most news recommender systems try to identify users' interests and news' attributes and use them to ...
This paper proposes a number of studies in order to move recommender systems beyond the traditional ...
Abstract- In this work, a novel dynamic personalized recommendation is proposed based on feature ext...
In the field of artificial intelligence, recommender systems are methods for predicting the relevanc...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
The aim of a recommender system is filtering the enormous quantity of information to obtain useful i...
International audienceRecommendation systems take advantage of products and users information in ord...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
Recommendation systems (RS) take advan-tage of products and users information in order to propose it...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
In this paper we consider Recommender System (RS) modeling in terms of Adaptive Hypermedia Systems (...
Conventional recommendation models often use the user-item interaction matrix (e.g. ratings) to pred...
In a period of time in which the content available through the Internet increases exponentially and...
Recommendation systems manage information overload in order to present personalized content to users...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
Most news recommender systems try to identify users' interests and news' attributes and use them to ...
This paper proposes a number of studies in order to move recommender systems beyond the traditional ...
Abstract- In this work, a novel dynamic personalized recommendation is proposed based on feature ext...
In the field of artificial intelligence, recommender systems are methods for predicting the relevanc...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
The aim of a recommender system is filtering the enormous quantity of information to obtain useful i...