作者
Tianxi Li, Lihua Lei, Sharmodeep Bhattacharyya, Koen Van den Berge, Purnamrita Sarkar, Peter J Bickel, Elizaveta Levina
发表日期
2022/4/3
期刊
Journal of the American Statistical Association
卷号
117
期号
538
页码范围
951-968
出版商
Taylor & Francis
简介
The problem of community detection in networks is usually formulated as finding a single partition of the network into some “correct” number of communities. We argue that it is more interpretable and in some regimes more accurate to construct a hierarchical tree of communities instead. This can be done with a simple top-down recursive partitioning algorithm, starting with a single community and separating the nodes into two communities by spectral clustering repeatedly, until a stopping rule suggests there are no further communities. This class of algorithms is model-free, computationally efficient, and requires no tuning other than selecting a stopping rule. We show that there are regimes where this approach outperforms K-way spectral clustering, and propose a natural framework for analyzing the algorithm’s theoretical performance, the binary tree stochastic block model. Under this model, we prove that the …
引用总数
2019202020212022202320241109133112
学术搜索中的文章
T Li, L Lei, S Bhattacharyya, K Van den Berge, P Sarkar… - Journal of the American Statistical Association, 2022