© 2015 Elsevier B.V.All rights reserved. Recommender systems are effectively used as a personalized information filtering technology to automatically predict and identify a set of interesting items on behalf of users according to their personal needs and preferences. Collaborative Filtering (CF) approach is commonly used in the context of recommender systems; however, obtaining better prediction accuracy and overcoming the main limitations of the standard CF recommendation algorithms, such as sparsity and cold-start item problems, remain a significant challenge. Recent developments in personalization and recommendation techniques support the use of semantic enhanced hybrid recommender systems, which incorporate ontology-based semantic simil...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
Recommender systems aim to assist web users to find only relevant information to their needs rather ...
Purpose: The purpose of this paper is to develop a hybrid semantic recommendation system to provide ...
Background: A recommender system captures the user preferences and behaviour to provide a relevant r...
Recommender systems have emerged in the e-commerce domain and have been developed to actively recomm...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
Improving the efficiency of methods has been a big challenge in recommender systems. It has been als...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
In electronic commerce, in order to help users to find their favourite products, we essentially need...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
Recommender systems learn about user preferences over time, automatically finding things of similar ...
One of the most famous methods for recommendation is user-based Collaborative Filtering (CF). This s...
With the ever increasing information overload on the internet, recommender systems have long become ...
Recommender systems, which filter information based on individual interests, represent a possible re...
International audiencePersonalized recommender systems provide relevant items to users from huge cat...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
Recommender systems aim to assist web users to find only relevant information to their needs rather ...
Purpose: The purpose of this paper is to develop a hybrid semantic recommendation system to provide ...
Background: A recommender system captures the user preferences and behaviour to provide a relevant r...
Recommender systems have emerged in the e-commerce domain and have been developed to actively recomm...
A recommender system captures the user preferences and behaviour to provide a relevant recommendatio...
Improving the efficiency of methods has been a big challenge in recommender systems. It has been als...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
In electronic commerce, in order to help users to find their favourite products, we essentially need...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
Recommender systems learn about user preferences over time, automatically finding things of similar ...
One of the most famous methods for recommendation is user-based Collaborative Filtering (CF). This s...
With the ever increasing information overload on the internet, recommender systems have long become ...
Recommender systems, which filter information based on individual interests, represent a possible re...
International audiencePersonalized recommender systems provide relevant items to users from huge cat...
Traditional collaborative filtering generates recommendations for the active user based solely on ra...
Recommender systems aim to assist web users to find only relevant information to their needs rather ...
Purpose: The purpose of this paper is to develop a hybrid semantic recommendation system to provide ...