In recent years, recommender systems have become widely utilized by businesses across industries. Given a set of users, items, and observed user-item interactions, these systems learn user preferences by collective intelligence, and deliver proper items under various contexts to improve user engagements and merchant profits. Collaborative Filtering is the most popular method for recommender systems. The principal idea of Collaborative Filtering is that users might be interested in the items that are preferred by users with similar preferences. Therefore, learning user preferences is the core technique of Collaborative Filtering. In this thesis, we study new methods to help us better understand user preferences from three perspectives. We fi...
Recommender systems are by far one of the most successful applications of big data and machine learn...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
In order to satisfy and positively surprise the users, a recommender system needs to recommend items...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Effective recommendation is indispensable to customized or personalized services. The ease of collec...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Collaborative filtering (CF) is one of the most successful recommendation approaches. It typically a...
User-based collaborative filtering is one of the most popular recommendation methods, however, it ha...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommender systems have been regarded as gaining a more significant role with the emergence of the ...
Abstract—the most common technique used for recommendations is collaborative filtering. Recommender ...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
Recommender systems are by far one of the most successful applications of big data and machine learn...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
In order to satisfy and positively surprise the users, a recommender system needs to recommend items...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Effective recommendation is indispensable to customized or personalized services. The ease of collec...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Collaborative filtering (CF) is one of the most successful recommendation approaches. It typically a...
User-based collaborative filtering is one of the most popular recommendation methods, however, it ha...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommender systems have been regarded as gaining a more significant role with the emergence of the ...
Abstract—the most common technique used for recommendations is collaborative filtering. Recommender ...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
Recommender systems are by far one of the most successful applications of big data and machine learn...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
In order to satisfy and positively surprise the users, a recommender system needs to recommend items...