Mixed membership problem for undirected network has been well studied in network analysis recent years. However, the more general case of mixed membership for directed network remains a challenge. Here, we propose an interpretable model: bipartite mixed membership stochastic blockmodel (BiMMSB for short) for directed mixed membership networks. BiMMSB allows that row nodes and column nodes of the adjacency matrix can be different and these nodes may have distinct community structure in a directed network. We also develop an efficient spectral algorithm called BiMPCA to estimate the mixed memberships for both row nodes and column nodes in a directed network. We show that the approach is asymptotically consistent under BiMMSB. We demonstrate the advantages of BiMMSB with applications to a small-scale simulation study, the directed Political blogs network and the Papers Citations network.
翻译:近年来,网络分析对非定向网络的混合成员问题进行了深入研究,然而,定向网络混合成员这一更为普遍的情况仍是一个挑战。在这里,我们提出了一个可解释的模式:针对定向混合成员网络的双方混合成员组合区块模型(简称BIMMSB),BIMMSB允许对相邻矩阵的行节点和列节点有所不同,这些节点在定向网络中可能有不同的社区结构。我们还开发了一个称为BIMPCA的高效光谱算法,用以估计定向网络的行节点和列节点的混合成员。我们表明,该方法在BIMMSB下是绝对一致的。我们展示了BIMMSB在小规模模拟研究、定向政治博客网络和文件引用网络应用方面的优势。