论文标题
加权复杂网络中基于模块化的主链提取
Modularity-based Backbone Extraction in Weighted Complex Networks
论文作者
论文摘要
现实世界网络的不断增长是一个巨大的挑战。因此,必须建立一个紧凑的网络版本,允许其分析。骨干提取技术是降低网络尺寸的领先解决方案,同时保留其功能。粗粒度合并相似的节点以降低网络大小,而基于滤波器的方法根据特定的统计属性去除节点或边缘。由于社区结构在现实世界网络中无处不在,因此在骨干提取过程中保存它是主要的关注。为此,我们提出了一种基于过滤器的方法。所谓的“模块化活力骨干”取消了对网络模块化的贡献较低的节点。实验结果表明,所提出的策略的表现优于“重叠节点自我主链”和“重叠的节点和轮毂骨架”。最近引入的这两个骨干提取过程证明了它们的功效,可以比流行的差异过滤器更好地保留原始网络的信息。
The constantly growing size of real-world networks is a great challenge. Therefore, building a compact version of networks allowing their analyses is a must. Backbone extraction techniques are among the leading solutions to reduce network size while preserving its features. Coarse-graining merges similar nodes to reduce the network size, while filter-based methods remove nodes or edges according to a specific statistical property. Since community structure is ubiquitous in real-world networks, preserving it in the backbone extraction process is of prime interest. To this end, we propose a filter-based method. The so-called "modularity vitality backbone" removes nodes with the lower contribution to the network's modularity. Experimental results show that the proposed strategy outperforms the "overlapping nodes ego backbone" and the "overlapping nodes and hub backbone." These two backbone extraction processes recently introduced have proved their efficacy to preserve better the information of the original network than the popular disparity filter.