Hypernetwork Representation Learning Based on Hyperedge Modeling
Author:
Zhu YuORCID, Zhao Haixing, Wang XiaoyingORCID, Huang Jianqiang
Abstract
Most network representation learning approaches only consider the pairwise relationships between the nodes in ordinary networks but do not consider the tuple relationships, namely the hyperedges, among the nodes in the hypernetworks. Therefore, to solve the above issue, a hypernetwork representation learning approach based on hyperedge modeling, abbreviated as HRHM, is proposed, which fully considers the hyperedges to obtain ideal node representation vectors that are applied to downstream machine learning tasks such as node classification, link prediction, community detection, and so on. Experimental results on the hypernetwork datasets show that with regard to the node classification task, the mean node classification accuracy of HRHM approach goes beyond other best baseline approach by about 1% on the MovieLens and wordnet, and with regard to the link prediction task, except for HPHG approach, the mean AUC value of HRHM approach surpasses that of other baseline approaches by about 17%, 18%, and 6%, respectively, on the GPS, drug, and wordnet. The mean AUC value of HRHM approach is very close to that of other best baseline approach on the MovieLens.
Funder
National Natural Science Foundation of China Natural Science Foundation of Qinghai Province Tsinghua University State Key Laboratory of Plateau Ecology and Agriculture, Qinghai University
Subject
Physics and Astronomy (miscellaneous),General Mathematics,Chemistry (miscellaneous),Computer Science (miscellaneous)
Reference26 articles.
1. Pedroche, F., Tortosa, L., and Vicent, J.F. (2019). An eigenvector centrality for multiplex networks with data. Symmetry, 11. 2. Papageorgiou, I., Bittner, D., Psychogios, M.N., and Hadjidemetriou, S. (2021). Brain immunoinformatics: A symmetrical link between informatics, wet lab and the clinic. Symmetry, 13. 3. Guerrero, M., Banos, R., Gil, C., Montoya, F.G., and Alcayde, A. (2019). Evolutionary algorithms for community detection in continental-scale high-voltage transmission grids. Symmetry, 11. 4. Zhou, D.Y., Huang, J.Y., and Schölkopf, B. (2006, January 4–7). Learning with hypergraphs: Clustering, classification and embedding. Proceedings of the 19th International Conference on Neural Information Processing Systems, Vancouver, Canada. 5. Sharma, K.K., Seal, A., Herrera-Viedma, E., and Krejcar, O. (2021). An enhanced spectral clustering algorithm with s-distance. Symmetry, 13.
|
|