Grad-Align+: Empowering Gradual Network Alignment Using Attribute Augmentation
Abstract
Network alignment (NA) is the task of discovering node correspondences across different networks. Although NA methods have achieved remarkable success in a myriad of scenarios, their satisfactory performance is not without prior anchor link information and/or node attributes, which may not always be available. In this paper, we propose Grad-Align+, a novel NA method using node attribute augmentation that is quite robust to the absence of such additional information. Grad-Align+ is built upon a recent state-of-the-art NA method, the so-called Grad-Align, that gradually discovers only a part of node pairs until all node pairs are found. Specifically, Grad-Align+ is composed of the following key components: 1) augmenting node attributes based on nodes' centrality measures, 2) calculating an embedding similarity matrix extracted from a graph neural network into which the augmented node attributes are fed, and 3) gradually discovering node pairs by calculating similarities between cross-network nodes with respect to the aligned cross-network neighbor-pair. Experimental results demonstrate that Grad-Align+ exhibits (a) superiority over benchmark NA methods, (b) empirical validation of our theoretical findings, and (c) the effectiveness of our attribute augmentation module.
Cite
@article{arxiv.2208.11025,
title = {Grad-Align+: Empowering Gradual Network Alignment Using Attribute Augmentation},
author = {Jin-Duk Park and Cong Tran and Won-Yong Shin and Xin Cao},
journal= {arXiv preprint arXiv:2208.11025},
year = {2022}
}
Comments
31st ACM International Conference on Information and Knowledge Management (CIKM 2022) (to appear) (Please cite our conference version.)