BRIGHT: A Bridging Algorithm for Network Alignment

Yuchen Yan, Si Zhang, Hanghang Tong
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引用次数: 41

Abstract

Multiple networks emerge in a wealth of high-impact applications. Network alignment, which aims to find the node correspondence across different networks, plays a fundamental role for many data mining tasks. Most of the existing methods can be divided into two categories: (1) consistency optimization based methods, which often explicitly assume the alignment to be consistent in terms of neighborhood topology and attribute across networks, and (2) network embedding based methods which learn low-dimensional node embedding vectors to infer alignment. In this paper, by analyzing representative methods of these two categories, we show that (1) the consistency optimization based methods are essentially specific random walk propagations from anchor links that might be too restrictive; (2) the embedding based methods no longer explicitly assume alignment consistency but inevitably suffer from the space disparity issue. To overcome these two limitations, we bridge these methods and propose a novel family of network alignment algorithms BRIGHT to handle both plain and attributed networks. Specifically, it constructs a space by random walk with restart (RWR) whose bases are one-hot encoding vectors of anchor nodes, followed by a shared linear layer. Our experiments on real-world networks show that the proposed family of algorithms BRIGHT outperform the state-of-the-arts for both plain and attributed network alignment tasks.
BRIGHT:网络对齐的桥接算法
在大量高影响力的应用中出现了多个网络。网络对齐是许多数据挖掘任务的基础,其目的是寻找不同网络之间的节点对应关系。现有的方法大多可以分为两大类:(1)基于一致性优化的方法,该方法通常明确假设跨网络在邻域拓扑和属性方面的对齐是一致的;(2)基于网络嵌入的方法,该方法通过学习低维节点嵌入向量来推断对齐。本文通过对这两类方法的代表性分析,表明:(1)基于一致性优化的方法本质上是锚链接的特定随机游走传播,可能限制太大;(2)基于嵌入的方法不再明确假设对齐一致性,不可避免地存在空间视差问题。为了克服这两个限制,我们将这些方法结合起来,提出了一种新的网络对齐算法BRIGHT,用于处理普通网络和属性网络。具体地说,它通过随机行走重新启动(RWR)构造一个空间,其基是锚节点的单热编码向量,然后是一个共享的线性层。我们在现实网络上的实验表明,所提出的BRIGHT算法家族在普通和归因网络对齐任务方面都优于最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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