Distributional Learning for Network Alignment with Global Constraints

Author:

Xu Hui1,Xiang Liyao1,Gan Xiaoying1,Fu Luoyi1,Wang Xinbing1,Zhou Chenghu2

Affiliation:

1. Shanghai Jiao Tong University, China

2. Chinese Academy of Sciences, China

Abstract

Network alignment, pairing corresponding nodes across the source and target networks, plays an important role in many data mining tasks. Extensive studies focus on learning node embeddings across different networks in a unified space. However, these methods have not taken the large structural discrepancy between aligned nodes into account, and thus is largely confined by the deterministic representations of nodes. In this work, we propose a novel network alignment framework highlighted by distributional learning and globally optimal alignment. By modeling the uncertainty of each node by Gaussian distribution, our framework builds similarity matrices on the Wasserstein distance between distributions, and applies Sinkhorn operation which learns the globally optimal mapping in an end-to-end fashion. We show that each integrated part of the framework contributes to the overall performance. Under a variety of experimental settings, our alignment framework shows superior accuracy and efficiency to the state-of-the-art.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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5. FASTEN

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