论文标题
使用强大的随机图分析最尖锐的可能聚类边界
Sharpest possible clustering bounds using robust random graph analysis
论文作者
论文摘要
复杂的网络理论至关重要地取决于对学位分布的假设,而对网络数据的拟合度分布尤其是针对具有强力法度的无标度网络的挑战。我们对复杂网络进行了强有力的评估,该网络不取决于整个学位分布,而仅取决于其平均值,范围和分散:对于大多数真实世界网络而言易于获得的汇总统计信息。通过求解几个半无限线性程序,我们获得了与具有相同摘要统计数据的学位分布的所有网络相关性和聚类措施的紧密(最清晰)界限。我们将各种极端随机图确定为具有特定三点分布的图形。我们利用紧密的界限来获得强大的定律,以解释程度度相关性和局部聚类如何作为节点度和网络大小的函数演变。这些坚固的法律表明,在相关性和聚类方面,具有不同差异的幂律网络是最极端的网络之一,为广泛报道的无标度网络现象(例如相关性和聚类衰减)建立了进一步的理论基础。
Complex network theory crucially depends on the assumptions made about the degree distribution, while fitting degree distributions to network data is challenging, in particular for scale-free networks with power-law degrees. We present a robust assessment of complex networks that does not depend on the entire degree distribution, but only on its mean, range and dispersion: summary statistics that are easy to obtain for most real-world networks. By solving several semi-infinite linear programs, we obtain tight (the sharpest possible) bounds for correlation and clustering measures, for all networks with degree distributions that share the same summary statistics. We identify various extremal random graphs that attain these tight bounds as the graphs with specific three-point degree distributions. We leverage the tight bounds to obtain robust laws that explain how degree-degree correlations and local clustering evolve as function of node degrees and network size. These robust laws indicate that power-law networks with diverging variance are among the most extreme networks in terms of correlation and clustering, building further theoretical foundation for widely reported scale-free network phenomena such as correlation and clustering decay.