Testing for stationarity of functional time series in the frequency domain

Citation
Aue Alexander et Van Delft Anne, Testing for stationarity of functional time series in the frequency domain, Annals of statistics , 48(5), 2020, pp. 2505-2547
Journal title
ISSN journal
00905364
Volume
48
Issue
5
Year of publication
2020
Pages
2505 - 2547
Database
ACNP
SICI code
Abstract
Interest in functional time series has spiked in the recent past with papers covering both methodology and applications being published at a much increased pace. This article contributes to the research in this area by proposing a new stationarity test for functional time series based on frequency domain methods. The proposed test statistics is based on joint dimension reduction via functional principal components analysis across the spectral density operators at all Fourier frequencies, explicitly allowing for frequency-dependent levels of truncation to adapt to the dynamics of the underlying functional time series. The properties of the test are derived both under the null hypothesis of stationary functional time series and under the smooth alternative of locally stationary functional time series. The methodology is theoretically justified through asymptotic results. Evidence from simulation studies and an application to annual temperature curves suggests that the test works well in finite samples.