GraPASA: parametric graph embedding via siamese architecture

Date

2020

Authors

Chen, Y.
Sun, K.
Pu, J.
Xiong, Z.
Zhang, X.

Editors

Advisors

Journal Title

Journal ISSN

Volume Title

Type:

Journal article

Citation

Information Sciences, 2020; 512:1442-1457

Statement of Responsibility

Conference Name

Abstract

Graph representation learning or graph embedding is a classical topic in data mining. Current embedding methods are mostly non-parametric, where all the embedding points are unconstrained free points in the target space. These approaches suffer from limited scalability and an over-flexible representation. In this paper, we propose a parametric graph embedding by fusing graph topology information and node content information. The embedding points are obtained through a highly flexible non-linear transformation from node content features to the target space. This transformation is learned using the contrastive loss function of the siamese network to preserve node adjacency in the input graph. On several benchmark network datasets, the proposed GraPASA method shows a significant margin over state-of-the-art techniques on benchmark graph representation tasks.

School/Discipline

Dissertation Note

Provenance

Description

Access Status

Rights

Copyright 2019 Elsevier

License

Grant ID

Call number

Persistent link to this record