Testing LRD in the spectral domain for functional time series in manifolds
Metadatos
Mostrar el registro completo del ítemEditorial
Institute of Mathematical Statistics
Materia
Asymptotic normality bias compact manifolds
Fecha
2025-08-18Referencia bibliográfica
María D. Ruiz–Medina. Rosa M. Crujeiras. "Testing LRD in the spectral domain for functional time series in manifolds." Electron. J. Statist. 19 (2) 3601 - 3642, 2025. https://doi.org/10.1214/25-EJS2421
Patrocinador
MCIU/AEI/10.13039/501100011033 (PID2022–142900NB-I00; PID2020-116587GB-I00; CEX2020-001105-M); Xunta de Galicia (ED431C 2021/24)Resumen
A statistical hypothesis test for long range dependence (LRD) is formulated in
the spectral domain for functional time series in manifolds. The elements of the spectral
density operator family are assumed to be invariant with respect to the group of isometries
of the manifold. The proposed test statistic is based on the weighted periodogram operator.
A Central Limit Theorem is derived to obtain the asymptotic Gaussian distribution of the
proposed test statistic operator under the null hypothesis. The rate of convergence to zero, in
the Hilbert–Schmidt operator norm, of the bias of the integrated empirical second and fourth
order cumulant spectral density operators is obtained under the alternative hypothesis. The
consistency of the test follows from the consistency of the integrated weighted periodogram
operator under LRD. Practical implementation of our testing approach is based on the
random projection methodology. A simulation study illustrates, in the context of spherical
functional time series, the asymptotic normality of the test statistic under the null hypothesis,
and its consistency under the alternative. The empirical size and power properties are also
computed for different functional sample sizes, and under different scenarios.





