© 2016 ACM. Social recommendation has been widely studied in recent years. Existing social recommendation models use various explicit pieces of social information as regularization terms, e.g., social links are considered as new constraints. However, social influence, an implicit source of information in social networks, is seldomly considered, even though it often drives recommendations in social networks. In this paper, we introduce a new global and local influence-based social recommendation model. Based on the observation that user purchase behaviour is influenced by both global influential nodes and the local influential nodes of the user, we formulate the global and local influence as an regularization terms, and incorporate them into...
This thesis proposes a novel framework to incorporate social regularization for item recommendation....
The user interaction in online social networks can not only reveal the social relationships among us...
Relationships between users in social networks have been widely used to improve recommender systems....
© 2017, Springer Science+Business Media, LLC. Recommender systems are designed to solve the informat...
Users in online networks exert different influence during the process of information propagation, an...
Social networking is an inevitable behavior of humans living in a society. In recent years, and with...
Social recommendations have been a very intriguing domain for researchers in the past decade. The ma...
Recently, with the advent of location-based social networking services (LBSNs), travel planning and ...
Precise user and item embedding learning is the key to building a successful recommender system. Tra...
Recommender Systems (RSs) aim to model and predict the user preference while interacting with items,...
The process of decision making in humans involves a combination of the genuine information held by t...
In recent years, with the rise of online social networks, personalized recommendations that leverage...
Exponential growth of information generated by online so-cial networks demands effective recommender...
Abstract. Social recommendation, that an individual recommends an item to another, has gained popula...
Recommendation systems have received considerable attention recently. However, most research has bee...
This thesis proposes a novel framework to incorporate social regularization for item recommendation....
The user interaction in online social networks can not only reveal the social relationships among us...
Relationships between users in social networks have been widely used to improve recommender systems....
© 2017, Springer Science+Business Media, LLC. Recommender systems are designed to solve the informat...
Users in online networks exert different influence during the process of information propagation, an...
Social networking is an inevitable behavior of humans living in a society. In recent years, and with...
Social recommendations have been a very intriguing domain for researchers in the past decade. The ma...
Recently, with the advent of location-based social networking services (LBSNs), travel planning and ...
Precise user and item embedding learning is the key to building a successful recommender system. Tra...
Recommender Systems (RSs) aim to model and predict the user preference while interacting with items,...
The process of decision making in humans involves a combination of the genuine information held by t...
In recent years, with the rise of online social networks, personalized recommendations that leverage...
Exponential growth of information generated by online so-cial networks demands effective recommender...
Abstract. Social recommendation, that an individual recommends an item to another, has gained popula...
Recommendation systems have received considerable attention recently. However, most research has bee...
This thesis proposes a novel framework to incorporate social regularization for item recommendation....
The user interaction in online social networks can not only reveal the social relationships among us...
Relationships between users in social networks have been widely used to improve recommender systems....