Publications
Finding Relevant Papers Based on Citation Relations
Liang, Y.; Li, Q. & Qian, T.
Wang, H.; Li, S.; Oyama, S.; Hu, X. & Qian, T., ed., 'Web-Age Information Management', 6897(), Springer, Berlin/Heidelberg, 403-414 (2011) [pdf]
With the tremendous amount of research publications, recommending relevant papers to researchers to fulfill their information need becomes a significant problem. The major challenge to be tackled by our work is that given a target paper, how to effectively recommend a set of relevant papers from an existing citation network. In this paper, we propose a novel method to address the problem by incorporating various citation relations for a proper set of papers, which are more relevant but with a very limited size. The proposed method has two unique properties. Firstly, a metric called Local Relation Strength is defined to measure the dependency between cited and citing papers. Secondly, a model called Global Relation Strength is proposed to capture the relevance between two papers in the whole citation graph. We evaluate our proposed model on a real-world publication dataset and conduct an extensive comparison with the state-of-the-art baseline methods. The experimental results demonstrate that our method can have a promising improvement over the state-of-the-art techniques.