Link recommendation, which recommends links to connect unlinked online social network users, is a fundamental social network analytics problem with ample business implications. Existing link recommendation methods tend to recommend similar friends to a user but overlook the user's diversity preference, although social psychology theories suggest the criticality of diversity preference to link recommendation performance. In recommender systems, a field related to link recommendation, a number of diversification methods have been proposed to improve the diversity of recommended items. Nevertheless, diversity preference is distinct from diversity studied by diversification methods. To address these research gaps, we define and operationalize t...
Online social networks improve social experience by con-necting users with common interests. Similar...
Twitter functions both as a social network and an informa-tion network, where users follow other use...
Link recommendation is an important and compelling problem at the intersection of recommender system...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Social recommender systems, such as “Who to follow” on Twitter, utilize approaches that recommend fr...
While there has been a lot of research towards improving the accuracy of recommender systems, the re...
While there has been a lot of research towards improving the accuracy of recommender systems, the re...
Online Social Networks currently have an important role in the life of millions of active internet u...
With a large amount of complex network data available, most existing recommendation models consider ...
The goal of this chapter is to give an overview of recent works on the development of social link-ba...
We address the problem of recommending online communities on social media platforms using design sci...
Personalized ranking and filtering algorithms, also known as recommender systems, form the backbone ...
Social link recommendation systems, like "People-you-may-know" on Facebook, "Who-to-follow" on Twitt...
We address the problem of recommending online communities on social media platforms using design sci...
Recommender systems o#er users a more intelligent and personalised mechanism to seek out new informa...
Online social networks improve social experience by con-necting users with common interests. Similar...
Twitter functions both as a social network and an informa-tion network, where users follow other use...
Link recommendation is an important and compelling problem at the intersection of recommender system...
Contact recommendation has become a common functionality in online social platforms, and an establis...
Social recommender systems, such as “Who to follow” on Twitter, utilize approaches that recommend fr...
While there has been a lot of research towards improving the accuracy of recommender systems, the re...
While there has been a lot of research towards improving the accuracy of recommender systems, the re...
Online Social Networks currently have an important role in the life of millions of active internet u...
With a large amount of complex network data available, most existing recommendation models consider ...
The goal of this chapter is to give an overview of recent works on the development of social link-ba...
We address the problem of recommending online communities on social media platforms using design sci...
Personalized ranking and filtering algorithms, also known as recommender systems, form the backbone ...
Social link recommendation systems, like "People-you-may-know" on Facebook, "Who-to-follow" on Twitt...
We address the problem of recommending online communities on social media platforms using design sci...
Recommender systems o#er users a more intelligent and personalised mechanism to seek out new informa...
Online social networks improve social experience by con-necting users with common interests. Similar...
Twitter functions both as a social network and an informa-tion network, where users follow other use...
Link recommendation is an important and compelling problem at the intersection of recommender system...