Predictive representation learning in motif-based graph networks
conference contribution
posted on 2019-01-01, 00:00authored byK Zhang, S Yu, L Wan, Jianxin Li, F Xia
Link prediction is an important task for analyzing social networks which also has other applications such as bioinformatics and e-commerce. Network representation learning (NRL), which can significantly enhance the performance for link prediction, has attracted much attention in recent years. However, the existing NRL methods mainly focus on observed network structures without considering hidden prediction knowledge in the representation space. Meanwhile, some random walk based NRL methods are dissatisfactory to learn link knowledge in dense networks with large scales. In this paper, we propose a predictive representation learning (PRL) model, which unifies node representations and motif-based structures, to improve prediction ability of NRL. We firstly enhance node representations based on motif-biased random walks and then employ L2-SVM to learn motif-connected node-pairs. By jointly optimizing two objectives of existent and nonexistent edges representations, we preserve more information of nodes in representation space based on supervised learning. To evaluate the performance of our proposed model, we implement experiments on 5 real data sets. Simulation results illustrate that our proposed model achieves better link prediction performance compared with other state-of-the-arts methods.
History
Volume
11919
Pagination
177-188
Location
Adelaide, S. Aust.
Start date
2019-12-02
End date
2019-12-05
ISSN
0302-9743
eISSN
1611-3349
ISBN-13
9783030352875
Language
eng
Publication classification
E1 Full written paper - refereed
Editor/Contributor(s)
Liu J, Bailey J
Title of proceedings
AI 2019: Advances in artificial intelligence : Proceedings of the 32nd Australasian Joint Conference on Artificial Intelligence 2019
Event
Artificial Intelligence. Conference (32nd : 2019 : Adelaide, S. Aust.)