论文标题
在时空功能过程中量化与可分离性的偏差
Quantifying deviations from separability in space-time functional processes
论文作者
论文摘要
在许多应用中,在简化的假设上仅计算可行的时空数据的协方差运算符,例如在文献中提出了该假设的能力测试。但是,由于众所周知,诸如气候数据之类的现实世界系统是密不可分的,通过统计检验验证了这一假设,因此似乎固有地值得怀疑。在本文中,我们提出了一种替代方法:根据可分离性措施,我们量化了数据的协方差操作员与可分离近似的分歧。置信区间通过统计保证将这些措施定位。此方法为用户提供了一种灵活的工具,以权衡可分离模型的计算收益与偏差相关的增加。作为可分离的近似值,我们考虑了部分痕迹和部分产品的既定方法,并为相应的估计量发展了弱收敛原理。此外,我们还为最佳,可分离近似值的估计量证明了这种结果,这些结果可以说是对应用程序最感兴趣的结果。特别是我们首次提出了此对象的统计推断,该推断限于先前的估计。除了置信区间,我们的结果还包括近似可分离性的测试。本文提出的所有方法均无滋扰参数,既不需要计算昂贵的重新采样程序,也不需要估计滋扰参数。一项仿真研究强调了我们方法的优势及其适用性,这是通过对德国年度温度数据的研究证明的。
The estimation of covariance operators of spatio-temporal data is in many applications only computationally feasible under simplifying assumptions, such as separability of the covariance into strictly temporal and spatial factors.Powerful tests for this assumption have been proposed in the literature. However, as real world systems, such as climate data are notoriously inseparable, validating this assumption by statistical tests, seems inherently questionable. In this paper we present an alternative approach: By virtue of separability measures, we quantify how strongly the data's covariance operator diverges from a separable approximation. Confidence intervals localize these measures with statistical guarantees. This method provides users with a flexible tool, to weigh the computational gains of a separable model against the associated increase in bias. As separable approximations we consider the established methods of partial traces and partial products, and develop weak convergence principles for the corresponding estimators. Moreover, we also prove such results for estimators of optimal, separable approximations, which are arguably of most interest in applications. In particular we present for the first time statistical inference for this object, which has been confined to estimation previously. Besides confidence intervals, our results encompass tests for approximate separability. All methods proposed in this paper are free of nuisance parameters and do neither require computationally expensive resampling procedures nor the estimation of nuisance parameters. A simulation study underlines the advantages of our approach and its applicability is demonstrated by the investigation of German annual temperature data.