Recommender systems help online users find relevant content by suggesting information of potential interest to them [4]. Social recommender is any recommender with online social relations as an additional input, namely, augmenting an existing recommendation engine with additional social content [5]. In this talk we describe our experience and lessons learned in developing social recommender systems able to deliver attractive and relevant content. More specifically, we focus on machine learning and data mining techniques exploited for the following goals: (i) to extract user preferences and needs to be used in the information filtering process; (ii) to harness the vast amount of information from user reviews, social networking, and local sea...
International audienceThis article proposes a contextual recommender system of shopping places for u...
Recommender systems apply data mining techniques and prediction algorithms to predict users ’ intere...
Social networking platforms like, Twitter, Face book etc., have now emerged as a major forum for the...
Recommender systems help online users find relevant content by suggesting information of potential i...
The problem of information overloading is prevalent in recommendations websites and social networks....
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
Recommender systems are a means of personalizing the pre-sentation of information to ensure that use...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Automated recommender systems predict user preferences by applying machine learning techniques to da...
Social recommender systems have been developed to filter the large amounts of data generated by soci...
The Internet provides large varieties of content, which renders consumption difficult for users. How...
An exponential increase in the usage of the World Wide Web (Web 2.0) has led to a wide collection of...
Abstract. Recent research has unveiled the importance of online social networks for improving the qu...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
The advent of internet has served as an offspring for the significant growth of online services and ...
International audienceThis article proposes a contextual recommender system of shopping places for u...
Recommender systems apply data mining techniques and prediction algorithms to predict users ’ intere...
Social networking platforms like, Twitter, Face book etc., have now emerged as a major forum for the...
Recommender systems help online users find relevant content by suggesting information of potential i...
The problem of information overloading is prevalent in recommendations websites and social networks....
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
Recommender systems are a means of personalizing the pre-sentation of information to ensure that use...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Automated recommender systems predict user preferences by applying machine learning techniques to da...
Social recommender systems have been developed to filter the large amounts of data generated by soci...
The Internet provides large varieties of content, which renders consumption difficult for users. How...
An exponential increase in the usage of the World Wide Web (Web 2.0) has led to a wide collection of...
Abstract. Recent research has unveiled the importance of online social networks for improving the qu...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
The advent of internet has served as an offspring for the significant growth of online services and ...
International audienceThis article proposes a contextual recommender system of shopping places for u...
Recommender systems apply data mining techniques and prediction algorithms to predict users ’ intere...
Social networking platforms like, Twitter, Face book etc., have now emerged as a major forum for the...