DNA: Dynamic Social Network Alignment
Li Sun, Zhongbao Zhang, Pengxin Ji, Jian Wen, Sen Su, Philip S. Yu

TL;DR
This paper introduces a novel framework called DNA for aligning dynamic social networks by modeling their inherent temporal patterns using deep neural architectures, significantly improving accuracy over static methods.
Contribution
The paper presents the first approach to align dynamic social networks, leveraging dual embeddings for local and global dynamics within a unified deep learning framework.
Findings
DNA outperforms existing static network alignment methods.
The dual embedding captures both local and global network dynamics.
The optimization algorithm has solid theoretical guarantees.
Abstract
Social network alignment, aligning different social networks on their common users, is receiving dramatic attention from both academic and industry. All existing studies consider the social network to be static and neglect its inherent dynamics. In fact, the dynamics of social networks contain the discriminative pattern of an individual, which can be leveraged to facilitate social network alignment. Hence, we for the first time propose to study the problem of aligning dynamic social networks. Towards this end, we propose a novel Dynamic social Network Alignment (DNA) framework, a unified optimization approach over deep neural architectures, to unfold the fruitful dynamics to perform alignment. However, it faces tremendous challenges in both modeling and optimization: (1) To model the intra-network dynamics, we explore the local dynamics of the latent pattern in friending evolvement and…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Bioinformatics and Genomic Networks
