基于协同图划分的可扩展异构社会网络对齐

Yuxiang Ren, Lin Meng, Jiawei Zhang
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引用次数: 1

摘要

社会网络对齐是近年来社会网络分析的一个重要研究问题。通过识别跨网络的共享用户,它将为研究人员提供更全面地了解用户在网络内部和跨网络的社交活动的机会。社交网络对齐是一个非常困难的问题。除了网络异构带来的挑战外,网络对齐可以归结为一个具有极大搜索空间的组合优化问题。现有对齐模型的学习效果和效率会随着网络规模的增大而显著降低。本文重点研究了可扩展异构社会网络对齐问题,并提出了一种新的两阶段网络对齐模型,即可扩展异构网络对齐(SHNA)。基于一组网络内和网络间的元图,SHNA首先将社交网络协同划分为一组子网络。通过部分已知的锚链接,SHNA可以提取分区的子网对应关系。SHNA提出不对齐完整的输入网络,而是识别匹配的子网络对之间的锚链接,而不匹配的子网络对之间的锚链接将被修剪,以有效地缩小搜索空间。已经做了大量的实验来比较SHNA与现实世界中对齐的社交网络数据集上最先进的基线方法。实验结果证明了SHNA在解决这一问题方面的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Heterogeneous Social Network Alignment through Synergistic Graph Partition
Social network alignment has been an important research problem for social network analysis in recent years. With the identified shared users across networks, it will provide researchers with the opportunity to achieve a more comprehensive understanding of users' social activities both within and across networks. Social network alignment is a very difficult problem. Besides the challenges introduced by the network heterogeneity, the network alignment can be reduced to a combinatorial optimization problem with an extremely large search space. The learning effectiveness and efficiency of existing alignment models will be degraded significantly as the network size increases. In this paper, we focus on studying the scalable heterogeneous social network alignment problem and propose to address it with a novel two-stage network alignment model, namely Scalable Heterogeneous Network Alignment (SHNA). Based on a group of intra- and inter-network meta diagrams, SHNA first partitions the social networks into a group of sub-networks synergistically. Via the partially known anchor links, SHNA can extract the partitioned sub-network correspondence relationships. Instead of aligning the complete input network, SHNA proposes to identify the anchor links between the matched sub-network pairs, while those between the unmatched sub-networks will be pruned to effectively shrink the search space. Extensive experiments have been done to compare SHNA with the state-of-the-art baseline methods on a real-world aligned social networks dataset. The experimental results have demonstrated both the effectiveness and efficiency of SHNA in addressing the problem.
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