The equivalences of community detection methods for bipartite networks

Guolin Wu, Jinzhao Wu, Changgui Gu, Yuan Yuan, Haitao Tang
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Abstract

Investigating the community structures of bipartite networks is a frequent topic of discussion in the ecological and social fields. The most widely used methods, as proposed by numerous academics from varying perspectives, include spectral graph partitioning, modularity, nonnegative matrix factorization, and stochastic block model. In this paper, we demonstrate three equivalences among these four methods. One, both Dhillon spectral graph partitioning and Barber modularity clustering are equivalent to solving for the matrix's left and right singular vectors after relaxing the discrete constraints. Two, the nonnegative matrix factorization clustering is equivalent to the Dhillon spectral graph partitioning. Three, The bipartite stochastic block model is equivalent to the constraint-based NMF that uses K-L divergence as its cost function. These equivalences, obtained through rigorous mathematical derivations, will aid in the future development of efficient algorithms for community detection in bipartite networks.
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双方位网络群落检测方法的等价性
研究双方位网络的群落结构是生态和社会领域经常讨论的话题。众多学者从不同角度提出了最广泛使用的方法,包括谱图分割法、模块化法、非负矩阵因式分解法和随机块模型。在本文中,我们证明了这四种方法之间的三个等价性。其一,Dhillon 谱图分割法和 Barber 模块化聚类法都等价于在放松离散约束后求解矩阵的左右奇异矢量。其二,非负矩阵因式分解聚类等价于 Dhillon 谱图分割法。第三,双方位随机块模型等价于使用 K-L 发散作为代价函数的基于约束的 NMF。这些等价关系是通过严格的数学推导得到的,将有助于未来在双方格网络中开发高效的群落检测算法。
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