We present a comprehensive extension of the latent position network model known as the random dot product graph to accommodate multiple graphs -- both undirected and directed -- which share a common subset of nodes, and propose a method for jointly embedding the associated adjacency matrices, or submatrices thereof, into a suitable latent space. Theoretical results concerning the asymptotic behaviour of the node representations thus obtained are established, showing that after the application of a linear transformation these converge uniformly in the Euclidean norm to the latent positions with Gaussian error. Within this framework, we present a generalisation of the stochastic block model to a number of different multiple graph settings, and demonstrate the effectiveness of our joint embedding method through several statistical inference tasks in which we achieve comparable or better results than rival spectral methods. Empirical improvements in link prediction over single graph embeddings are exhibited in a cyber-security example.
翻译:我们展示了被称为随机点产品图的潜伏位置网络模型的全面延伸,以容纳多个图解 -- -- 无方向和定向的图解 -- -- 共有一组节点,并提出了将相关相邻矩阵或其次矩阵联合嵌入适当潜伏空间的方法。关于由此获得的节点代表方无症状行为的理论结果已经确立,表明在应用线性转变后,这些在欧球规范中统一结合到带有高山错误的潜在位置。在此框架内,我们将随机区块模型概括到若干不同的多图设置中,并通过若干统计推论任务展示了我们联合嵌入方法的有效性,在这些工作中,我们取得了比对立光谱方法相近或更好的效果。在单一图嵌入点的预测中,在网络安全实例中展示了对单图嵌入点的连接的改进。