We present a general theory to quantify the uncertainty from imposing structural assumptions on the second-order structure of nonstationary Hilbert space-valued processes, which can be measured via functionals of time-dependent spectral density operators. The second-order dynamics are well-known to be elements of the space of trace-class operators, the latter is a Banach space of type 1 and of cotype 2, which makes the development of statistical inference tools more challenging. A part of our contribution is to obtain a weak invariance principle as well as concentration inequalities for (functionals of) the sequential time-varying spectral density operator. In addition, we derive estimators of the deviation measures in the nonstationary context that are asymptotically pivotal. We then apply this framework and propose statistical methodology to investigate the validity of structural assumptions for nonstationary response surface data, such as low-rank assumptions in the context of time-varying dynamic fPCA and principle separable component analysis, deviations from stationarity with respect to the square root distance, and deviations from zero functional canonical coherency.
翻译:我们提出了一个一般理论,以量化对非静止Hilbert空间价值评估过程的第二阶结构施加结构性假设的不确定性,这种假设可以通过时间依赖光谱密度操作员的功能加以测量;第二阶动态众所周知是微量级操作员空间的要素,后者是1型和2型共型的Banach空间,这使得统计推论工具的开发更具挑战性;我们的部分贡献是取得一个薄弱的偏差原则以及连续时间变化的光谱密度操作员(功能)的集中不平等;此外,我们还从非静止环境中得出偏差措施的估测器,这种偏差措施具有象征性关键作用;然后我们运用这一框架并提出统计方法,调查非静止反应表面数据的结构假设的有效性,例如,在时间变化动态FPCA和原则可分解部分分析背景下的低等级假设,与平根距离的定位性差,以及零功能性焦距差。