A backbone extraction method with Local Search for complex weighted networks

Zhan Bu, Zhiang Wu, Liqiang Qian, Jie Cao, Guandong Xu
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引用次数: 4

Abstract

The backbone is the natural abstraction of a complex network, which can help people to understand it in a more simplified form. Backbone extraction becomes more challenging as many networks are evolving into large scale and the weight distributions are spanning several orders of magnitude. Traditional filter-based methods tend to include many outliers into the backbone. What is more, they often suffer from the computational inefficiency-the exhaustive search of all nodes or edges is often prohibitively expensive. In this work, we propose a Local Search based Backbone Extraction Heuristic (LS-BEH) to find the backbone in a complex weighted network. First, a strict filtering rule is carefully designed to determine edges to be preserved or discarded. Second, we present a local search model to examine part of edges in an iterative way. Experimental results on two real-life networks demonstrate the advantage of LS-BEH over the classic disparity filter method by either effectiveness or efficiency validity.
基于局部搜索的复杂加权网络主干提取方法
主干是一个复杂网络的自然抽象,它可以帮助人们以更简化的形式来理解它。随着网络向大规模发展,权重分布跨越几个数量级,骨干网提取变得更加具有挑战性。传统的基于过滤器的方法倾向于将许多异常值包含到主干中。更重要的是,它们经常遭受计算效率低下的困扰——对所有节点或边的穷举搜索通常代价高昂。在这项工作中,我们提出了一种基于局部搜索的骨干提取启发式算法(LS-BEH)来寻找复杂加权网络中的骨干。首先,仔细设计严格的过滤规则来确定要保留或丢弃的边缘。其次,我们提出了一种局部搜索模型,以迭代的方式检查部分边缘。在两个实际网络上的实验结果表明,LS-BEH在有效性和效率有效性方面都优于经典的视差滤波方法。
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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