© 2018 IEEE. Fast-growing scientific papers pose the problem of rapidly and accurately finding a list of reference papers for a given manuscript. Citation recommendation is an indispensable technique to overcome this obstacle. In this paper, we propose a citation recommendation approach via mutual reinforcement on a three-layered graph, in which each paper, author or venue is represented as a vertex in the paper layer, author layer, and venue layer, respectively. For personalized recommendation, we initiate the random walk separately for each query researcher. However, this has a high computational complexity due to the large graph size. To solve this problem, we apply a three-layered interactive clustering approach to cluster related verti...
Citation relationship between scientific publications has been successfully used for scholarly bibli...
In this paper, we present an adaptive graph-based personalized recommendation method based on co-ran...
In this paper, we target at four specific recommendation tasks in the aca-demic environment: the rec...
With the tremendous amount of research publications, it has become increasingly important to provide...
Scholarly search engines, reference management tools, and academic social networks enable modern r...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Citation recommendation plays an important role in the context of scholarly big data, where finding ...
Citation recommendation (CR) is able to intelligently generate a paper list related to a query paper...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Scientific items (such as papers or datasets) discovery and reuse is crucial to support and improve ...
Currently the many publications are now available electronically and online, which has had a signifi...
To help generate relevant suggestions for researchers, recommen-dation systems have started to lever...
Network representation has been recently exploited for many applications, such as citation recommend...
Abstract—Citation recommendation systems can help a researcher find works that are relevant to his f...
Citation relationship between scientific publications has been successfully used for scholarly bibli...
In this paper, we present an adaptive graph-based personalized recommendation method based on co-ran...
In this paper, we target at four specific recommendation tasks in the aca-demic environment: the rec...
With the tremendous amount of research publications, it has become increasingly important to provide...
Scholarly search engines, reference management tools, and academic social networks enable modern r...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Citation recommendation plays an important role in the context of scholarly big data, where finding ...
Citation recommendation (CR) is able to intelligently generate a paper list related to a query paper...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Citation recommendation is an interesting but challenging research problem. Most existing studies as...
Scientific items (such as papers or datasets) discovery and reuse is crucial to support and improve ...
Currently the many publications are now available electronically and online, which has had a signifi...
To help generate relevant suggestions for researchers, recommen-dation systems have started to lever...
Network representation has been recently exploited for many applications, such as citation recommend...
Abstract—Citation recommendation systems can help a researcher find works that are relevant to his f...
Citation relationship between scientific publications has been successfully used for scholarly bibli...
In this paper, we present an adaptive graph-based personalized recommendation method based on co-ran...
In this paper, we target at four specific recommendation tasks in the aca-demic environment: the rec...