Testing separability for continuous functional data
Analyzing the covariance structure of data is a fundamental task of statistics. While this task is simple for low-dimensional observations, it becomes challenging for more intricate objects, such as multivariate functions. Here, the covariance can be so complex that just saving a non-parametric esti...
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Zusammenfassung: | Analyzing the covariance structure of data is a fundamental task of
statistics. While this task is simple for low-dimensional observations, it
becomes challenging for more intricate objects, such as multivariate functions.
Here, the covariance can be so complex that just saving a non-parametric
estimate is impractical and structural assumptions are necessary to tame the
model. One popular assumption for space-time data is separability of the
covariance into purely spatial and temporal factors. In this paper, we present
a new test for separability in the context of dependent functional time series.
While most of the related work studies functional data in a Hilbert space of
square integrable functions, we model the observations as objects in the space
of continuous functions equipped with the supremum norm. We argue that this
(mathematically challenging) setup enhances interpretability for users and is
more in line with practical preprocessing.
Our test statistic measures the maximal deviation between the estimated
covariance kernel and a separable approximation. Critical values are obtained
by a non-standard multiplier bootstrap for dependent data. We prove the
statistical validity of our approach and demonstrate its practicability in a
simulation study and a data example. |
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DOI: | 10.48550/arxiv.2301.04487 |