This paper proposes a flexible framework for inferring large-scale time-varying and time-lagged correlation networks from multivariate or high-dimensional non-stationary time series with piecewise smooth trends. Built on a novel and unified multiple-testing procedure of time-lagged cross-correlation functions with a fixed or diverging number of lags, our method can accurately disclose flexible time-varying network structures associated with complex functional structures at all time points. We broaden the applicability of our method to the structure breaks by developing difference-based nonparametric estimators of cross-correlations, achieve accurate family-wise error control via a bootstrap-assisted procedure adaptive to the complex temporal dynamics, and enhance the probability of recovering the time-varying network structures using a new uniform variance reduction technique. We prove the asymptotic validity of the proposed method and demonstrate its effectiveness in finite samples through simulation studies and empirical applications.
翻译:本文提出了一个灵活的框架,用以从多变量或高维非静止时间序列中,用片度平滑的趋势,推断出大型时间变化和时间滞后的关联网络。我们采用的方法可以精确地披露与所有时间点的复杂功能结构相关的灵活时间变化网络结构。我们通过开发基于差异的非参数的交叉关系估计器,扩大我们的方法对结构断裂的适用性,通过适合复杂时间动态的靴式辅助程序实现准确的家庭错失控制,并增加利用新的统一差异减少技术恢复时间变化网络结构的可能性。我们证明拟议方法的无损有效性,并通过模拟研究和实验应用在有限样本中展示其有效性。