Title :
Cross-Domain Scientific Collaborations Prediction with Citation Information
Author :
Ying Guo ; Xi Chen
Author_Institution :
Dept. of Autom., Tsinghua Univ., Beijing, China
Abstract :
Cross-domain Scientific Collaborations have promoted rapid development of science and generated many innovative breakthroughs. However, predicting cross-domain scientific collaboration problem is rarely studied and collaboration recommendation methods within single domain cannot be directly utilized for solving cross-domain problems. In this paper, we propose a Hybrid Graph Model, which combines both explicit co-author relationships and implicit co-citation relationships together to construct a hybrid graph and then Random Walks with Restarts concept is used to measure and rank relatedness. The experiments with large publication data set show that Hybrid Graph Model outperforms some baseline approaches on several recommendation metrics. Citation information has been demonstrated to be very helpful for scientific collaboration recommendations as well.
Keywords :
graph theory; information analysis; recommender systems; social networking (online); citation information; cross-domain scientific collaborations; explicit co-author relationships; hybrid graph model; implicit co-citation relationships; random walks with restarts concept; recommendation methods; relatedness measurement; relatedness ranking; scientific collaboration recommendations; Collaboration; Data mining; Data models; Electrocardiography; Informatics; Measurement; Probabilistic logic; data mining; link prediction; recommender algorithms; social network;
Conference_Titel :
Computer Software and Applications Conference Workshops (COMPSACW), 2014 IEEE 38th International
Conference_Location :
Vasteras
DOI :
10.1109/COMPSACW.2014.127