This study aims to develop a recommender system for social learning platforms that combine traditional learning management systems with commercial social networks like Facebook. We therefore take into account social interactions of users to make recommendations on learning resources. We propose to make use of graph-walking methods for improving performance of the well-known baseline algorithms. We evaluate the proposed graph-based approach in terms of their F1 score, which is an effective combination of precision and recall as two fundamental metrics used in recommender systems area. The results show that the graph-based approach can help to improve performance of the baseline recommenders; particularly for rather sparse educational dataset...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
International audienceRecommender systems are able to estimate the interest for a user of a given re...
This study aims to develop a recommender system for social learning platforms that combine tradition...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
Recommender systems have emerged as an essential response to the rapidly growing digital information...
In the past years learning has evolved from face-to-face to computer supported learning, and we are ...
Recommender systems have been intensively used to create personalised profiles, which enhance the us...
(Scimago Q3, ATIEF B)International audienceThe present work fits into the context of recommender sys...
This research proposed a dynamic recommendation system for a social learning environment entitled Co...
Abstract: Social networks have become an unlimited source of information, for that several applicati...
Recommender systems are widely used in many domains. In this work, the importance of a recommender s...
This paper presents a novel recommendation system for e-learning platforms. Recent years have seen t...
The main goal of our project is to research how recommender system technologies behave in Learning N...
Recommender systems have become paramount to customize information access and reduce information ove...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
International audienceRecommender systems are able to estimate the interest for a user of a given re...
This study aims to develop a recommender system for social learning platforms that combine tradition...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
Recommender systems have emerged as an essential response to the rapidly growing digital information...
In the past years learning has evolved from face-to-face to computer supported learning, and we are ...
Recommender systems have been intensively used to create personalised profiles, which enhance the us...
(Scimago Q3, ATIEF B)International audienceThe present work fits into the context of recommender sys...
This research proposed a dynamic recommendation system for a social learning environment entitled Co...
Abstract: Social networks have become an unlimited source of information, for that several applicati...
Recommender systems are widely used in many domains. In this work, the importance of a recommender s...
This paper presents a novel recommendation system for e-learning platforms. Recent years have seen t...
The main goal of our project is to research how recommender system technologies behave in Learning N...
Recommender systems have become paramount to customize information access and reduce information ove...
Recommender systems provide users with content they might be interested in. Conventionally, recommen...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
International audienceRecommender systems are able to estimate the interest for a user of a given re...