It has been proved in a number of applications that it is useful to predict unknown social links, and link prediction has played an important role in sociological study. Although there has been a surge of pertinent approaches to link prediction, most of them focus on positive link prediction while giving few attentions to the problem of inferring unknown negative links. The inherent characteristics of negative relations present great challenges to traditional link prediction: (1) there are very few negative interaction data; (2) negative links are much sparser than positive links; (3) social data is often noisy, incomplete, and fast-evolved. This paper intends to address this novel problem by solely leveraging structural information and fur...
Numerous real-world relations can be represented by signed networks with positive links (e.g., trust...
Social network analysis and mining get ever-increasing importance in recent years, which is mainly d...
AbstractIn signed social network, the user-generated content and interactions have overtaken the web...
Signed network analysis has attracted increasing attention in recent years. This is in part because ...
© 2019 Association for Computing Machinery. Link prediction in signed social networks is an importan...
Link prediction is a fundamental research issue in social networks, which aims to infer the formatio...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
We rethink the link prediction problem in signed social networks by also considering "no-relation" a...
koblenz.de We investigate the “negative link ” feature of social networks that allows users to tag o...
Link prediction in signed social networks is challenging because of the existence and imbalance of t...
Social network analysis and mining get ever-increasingly important in recent years, which is mainly ...
Many interesting real-world systems are represented as complex networks with multiple types of inter...
In some online social network services (SNSs), the members are allowed to label their relationships ...
Signed social networks that have both negative and positive links are becoming a popular form of soc...
Numerous real-world relations can be represented by signed networks with positive links (e.g., trust...
Social network analysis and mining get ever-increasing importance in recent years, which is mainly d...
AbstractIn signed social network, the user-generated content and interactions have overtaken the web...
Signed network analysis has attracted increasing attention in recent years. This is in part because ...
© 2019 Association for Computing Machinery. Link prediction in signed social networks is an importan...
Link prediction is a fundamental research issue in social networks, which aims to infer the formatio...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
Many link prediction methods have been developed to infer unobserved links or predict missing links ...
We rethink the link prediction problem in signed social networks by also considering "no-relation" a...
koblenz.de We investigate the “negative link ” feature of social networks that allows users to tag o...
Link prediction in signed social networks is challenging because of the existence and imbalance of t...
Social network analysis and mining get ever-increasingly important in recent years, which is mainly ...
Many interesting real-world systems are represented as complex networks with multiple types of inter...
In some online social network services (SNSs), the members are allowed to label their relationships ...
Signed social networks that have both negative and positive links are becoming a popular form of soc...
Numerous real-world relations can be represented by signed networks with positive links (e.g., trust...
Social network analysis and mining get ever-increasing importance in recent years, which is mainly d...
AbstractIn signed social network, the user-generated content and interactions have overtaken the web...