Multimedia data is known for its variety and also for the difficulty that comes in extracting relevant features from multimedia data. Owing to which the collaborative recommendation systems have found their foothold in multimedia recommender systems. However, modern-day multimedia sites have tons of user history in the form of user feedback, reviews, votes, comments, and etc. We can use these social interactions to extract useful content features, which can then be used in content based recommendation system. In this paper, we propose a novel hybrid recommender system that combines the content and collaborative systems using a Bayesian model. We substitute the concrete textual content with a sparse tag information. Extensive experiments on ...
In this dissertation, we study the problem of social media recommendations with a heavy emphasis on ...
Making a decision among a set of items from compound and complex information has been becoming a dif...
As the Internet is more embedded in people���s lives, Internet users draw on new Internet applicatio...
Collaborative recommendation systems are more popular for multimedia data compared to content- base...
The extraordinary technological progress we have witnessed in recent years has made it possible to g...
Recommender Systems apply machine learning and data mining techniques for filtering unseen informati...
In the era of digital world and WWW, most of the human activities have slowly started to be tightly ...
Commerce and entertainment world today have shifted to the digital platforms where customer preferen...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
Despite recommender systems based on collaborative filtering typically outperform content-based syst...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Social tagging systems have become increasingly a popular way to organize online heterogeneous resou...
Abstract. The explosion of collaborative platforms we are recently wit-nessing, such as social netwo...
Nowadays Web sites tend to be more and more social: users can upload any kind of information on coll...
AbstractRecommender systems enable users to access products or articles that they would otherwise no...
In this dissertation, we study the problem of social media recommendations with a heavy emphasis on ...
Making a decision among a set of items from compound and complex information has been becoming a dif...
As the Internet is more embedded in people���s lives, Internet users draw on new Internet applicatio...
Collaborative recommendation systems are more popular for multimedia data compared to content- base...
The extraordinary technological progress we have witnessed in recent years has made it possible to g...
Recommender Systems apply machine learning and data mining techniques for filtering unseen informati...
In the era of digital world and WWW, most of the human activities have slowly started to be tightly ...
Commerce and entertainment world today have shifted to the digital platforms where customer preferen...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
Despite recommender systems based on collaborative filtering typically outperform content-based syst...
Collaborative and content-based filtering are the recommendation techniques most widely adopted to d...
Social tagging systems have become increasingly a popular way to organize online heterogeneous resou...
Abstract. The explosion of collaborative platforms we are recently wit-nessing, such as social netwo...
Nowadays Web sites tend to be more and more social: users can upload any kind of information on coll...
AbstractRecommender systems enable users to access products or articles that they would otherwise no...
In this dissertation, we study the problem of social media recommendations with a heavy emphasis on ...
Making a decision among a set of items from compound and complex information has been becoming a dif...
As the Internet is more embedded in people���s lives, Internet users draw on new Internet applicatio...