Community structure is common in many real networks, with nodes clustered in groups sharing the same connections patterns. While many community detection methods have been developed for networks with binary edges, few of them are applicable to networks with weighted edges, which are common in practice. We propose a pseudo-likelihood community estimation algorithm derived under the weighted stochastic block model for networks with normally distributed edge weights, extending the pseudo-likelihood algorithm for binary networks, which offers some of the best combinations of accuracy and computational efficiency. We prove that the estimates obtained by the proposed method are consistent under the assumption of homogeneous networks, a weighted analogue of the planted partition model, and show that they work well in practice for both homogeneous and heterogeneous networks. We illustrate the method on simulated networks and on a fMRI dataset, where edge weights represent connectivity between brain regions and are expected to be close to normal in distribution by construction.
翻译:社区结构在许多实际网络中很常见,节点集中在相同连接模式的群落中。虽然已经为二边网络制定了许多社区探测方法,但很少有这些方法适用于加权边缘网络,而加权边缘网络在实践中是常见的。我们提议了一种假似社区估计算法,根据通常分布边缘重量的网络加权随机区块模型得出,扩大二边网络的伪似值算法,这种算法提供了精度和计算效率的最佳组合。我们证明,拟议方法获得的估计数在单一网络的假设下是一致的,是人种分布模型的加权类比,并表明这些方法在同质网络和多式网络的实际运作良好。我们介绍了模拟网络和FMRI数据集的方法,其中边缘重量代表脑区域之间的连接,预计通过施工分配的边缘重量接近正常。</s>