Chen Chen, Fushing Hsieh
University of California, Davis, California 95616, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Oct;86(4 Pt 1):041120. doi: 10.1103/PhysRevE.86.041120. Epub 2012 Oct 12.
We introduce a between-ness-based distance metric to extract local and global information for each pair of nodes (or "vertices" used interchangeably) located in a binary network. Since this distance then superimposes a weighted graph upon such a binary network, a multiscale clustering mechanism, called data cloud geometry, is applicable to discover hierarchical communities within a binary network. This approach resolves many shortcomings of community finding approaches, which are primarily based on modularity optimization. Using several contrived and real binary networks, our community hierarchies compare favorably with results derived from a recently proposed approach based on time-scale differences of random walks and has already demonstrated significant improvements over module-based approaches, especially on the multiscale and the determination of the number of communities.
我们引入一种基于中介性的距离度量,以提取位于二元网络中的每对节点(或可互换使用的“顶点”)的局部和全局信息。由于此距离随后会在这样的二元网络上叠加一个加权图,因此一种称为数据云几何的多尺度聚类机制适用于发现二元网络内的层次化社区。这种方法解决了主要基于模块性优化的社区发现方法的许多缺点。使用几个虚构的和真实的二元网络,我们的社区层次结构与基于随机游走时间尺度差异的最近提出的方法得出的结果相比具有优势,并且已经证明相对于基于模块的方法有显著改进,特别是在多尺度和社区数量的确定方面。