Analyzing time series in the frequency domain enables the development of powerful tools for investigating the second-order characteristics of multivariate processes. Parameters like the spectral density matrix and its inverse, the coherence or the partial coherence, encode comprehensively the complex linear relations between the component processes of the multivariate system. In this paper, we develop inference procedures for such parameters in a high-dimensional, time series setup. Towards this goal, we first focus on the derivation of consistent estimators of the coherence and, more importantly, of the partial coherence which possess manageable limiting distributions that are suitable for testing purposes. Statistical tests of the hypothesis that the maximum over frequencies of the coherence, respectively, of the partial coherence, do not exceed a prespecified threshold value are developed. Our approach allows for testing hypotheses for individual coherences and/or partial coherences as well as for multiple testing of large sets of such parameters. In the latter case, a consistent procedure to control the false discovery rate is developed. The finite sample performance of the inference procedures introduced is investigated by means of simulations and applications to the construction of graphical interaction models for brain connectivity based on EEG data are presented.
翻译:在频率范围内分析时间序列,有助于开发强有力的工具,调查多变过程的二阶特性。光谱密度矩阵及其反向、一致性或部分一致性等参数,全面编码多变系统各组成部分之间复杂的线性关系。在本文中,我们为高维时间序列设置中这些参数制定了推论程序。为了实现这一目标,我们首先侧重于得出一致度的测算器,更重要的是,得出具有可控限制分布的适合测试目的的部分一致性。对部分一致性频率以上最高值不超过预定阈值的假设,进行了统计测试。我们的方法允许测试个人一致性和/或部分一致性的假设,并多次测试这些参数的大型组合。在后一种情况下,我们开发了控制错误发现率的一致程序。通过模拟和应用构建基于EEG数据的大脑连接的图形互动模型,对引入的推断程序的有限样本性表现进行了调查。