Network-valued time series are currently a common form of network data. However, the study of the aggregate behavior of network sequences generated from network-valued stochastic processes is relatively rare. Most of the existing research focuses on the simple setup where the networks are independent (or conditionally independent) across time, and all edges are updated synchronously at each time step. In this paper, we study the concentration properties of the aggregated adjacency matrix and the corresponding Laplacian matrix associated with network sequences generated from lazy network-valued stochastic processes, where edges update asynchronously, and each edge follows a lazy stochastic process for its updates independent of the other edges. We demonstrate the usefulness of these concentration results in proving consistency of standard estimators in community estimation and changepoint estimation problems. We also conduct a simulation study to demonstrate the effect of the laziness parameter, which controls the extent of temporal correlation, on the accuracy of community and changepoint estimation.
翻译:网络估值时间序列目前是网络数据的一种常见形式,然而,对网络估值的随机过程产生的网络序列总体行为的研究相对较少。现有研究大多侧重于网络在不同时间独立(或有条件独立)的简单设置,所有边缘在每个时间步骤都同步更新。在本文件中,我们研究了汇总的对称矩阵的集中特性和与懒惰的网络估值的随机过程产生的网络序列相关的相应的拉帕莱西亚矩阵,在这种过程中,边缘不同步地更新,每个边缘都遵循一个懒惰的对称进程进行更新的过程,以独立于其他边缘。我们证明这些集中结果有助于证明标准估计者在社区估计和改变点估计问题上的一致性。我们还进行了模拟研究,以展示拉齐参数的影响,该参数控制时间相关性的程度,对社区和变化点估计的准确性进行控制。