Recommender systems are modern applications that make suggestions to their users on a variety of items taking into account their preferences in many domains. These systems use people\u27s opinions to recommend to their end users items that are likely to be of their interest. They are designed to help users to decide on appropriate items and facilitate finding them in a very large collection of items. Traditional syntactic-based recommender systems suffer from several disadvantages, such as polysemy or synonymy, that limit its effectiveness. Semantic technologies provide a consistent and reliable basis for dealing with data at knowledge level. Adding semantically empowered techniques to recommender systems can significantly improve the overa...
Personalization and recommendation systems are a solution to the problem of content overload, especi...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Not AvailableThis paper proposes the design of a recommender system that uses knowledge stored in th...
This paper presents a semantic approach to Recommender Systems (RS), to exploit available contextual...
This research project is about music recommendation. More precisely, it is concerned with the proble...
This paper presents a semantics-based approach to Recommender Systems (RS), to exploit available con...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
Abstract — Recommender systems are mostly implemented in E-commerce website to help users or custome...
A content-based system for music recommendation and visualization of user preferences working on sem...
Personalized music recommendations can accurately push the music of interest from a massive song lib...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
Traditional recommender systems as they are mostly used in today's recommendation applications (e.g....
Personalization and recommendation systems are a solution to the problem of content overload, especi...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Not AvailableThis paper proposes the design of a recommender system that uses knowledge stored in th...
This paper presents a semantic approach to Recommender Systems (RS), to exploit available contextual...
This research project is about music recommendation. More precisely, it is concerned with the proble...
This paper presents a semantics-based approach to Recommender Systems (RS), to exploit available con...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
The amount of information and users has been increasing at a remarkable rate in recent years. This i...
Abstract — Recommender systems are mostly implemented in E-commerce website to help users or custome...
A content-based system for music recommendation and visualization of user preferences working on sem...
Personalized music recommendations can accurately push the music of interest from a massive song lib...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
International audienceThe constant growth of the Internet has made recommender systems very useful t...
Traditional recommender systems as they are mostly used in today's recommendation applications (e.g....
Personalization and recommendation systems are a solution to the problem of content overload, especi...
Avoiding digital marketing, surveys, reviews and online users behavior approaches on digital age are...
Not AvailableThis paper proposes the design of a recommender system that uses knowledge stored in th...