SCORE was introduced as a spectral approach to network community detection. Since many networks have severe degree heterogeneity, the ordinary spectral clustering (OSC) approach to community detection may perform unsatisfactorily. SCORE alleviates the effect of degree heterogeneity by introducing a new normalization idea in the spectral domain and makes OSC more effective. SCORE is easy to use and computationally fast. It adapts easily to new directions and sees an increasing interest in practice. In this paper, we review the basics of SCORE, the adaption of SCORE to network mixed membership estimation and topic modeling, and the application of SCORE in real data, including two datasets on the publications of statisticians. We also review the theoretical 'ideology' underlying SCORE. We show that in the spectral domain, SCORE converts a simplicial cone to a simplex, and provides a simple and direct link between the simplex and network memberships. SCORE attains an exponential rate and a sharp phase transition in community detection, and achieves optimal rates in mixed membership estimation and topic modeling.
翻译:由于许多网络具有严重程度的异质性,普通的光谱聚集(OSC)社区探测方法可能不令人满意。SCORE通过在光谱域引入新的正常化理念减轻了程度异质性的影响,使OSSC更加有效。SCORE很容易使用和快速计算。SCORE很容易适应新的方向,并发现对实践的兴趣越来越大。在本文中,我们审查了SCORE的基本内容、SCORE适应网络混合成员估计和专题模型的调整,以及SCORE在实际数据中的应用,包括统计人员出版物上的两个数据集。我们还审查了SCORE的理论“理论”基础。我们表明,在光谱域,SCORE将一个简单轴和网络成员之间的简单和直接的联系,SCORE达到指数率和社区检测的急剧过渡,并在混合成员估计和专题模型中达到最佳比率。