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 smoo...
Functional time series analysis, whether based on time or frequency domain methodology, has traditio...
Abstract. We propose a general bootstrap procedure to approximate the null distri-bution of nonparam...
We develop a test for stationarity of a time series against the alternative of a time-changing covar...
Interest in functional time series has spiked in the recent past with papers covering both methodolo...
A frequency-domain statistic is introduced to test for stationarity versus stochastic or determinist...
We derive several tests for the presence of a periodic component in a time series of functions. We c...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
A framework for the asymptotic analysis of local power properties of tests of stationarity in time ...
The literature on time series of functional data has focused on processes of which the probabilistic...
The literature on time series of functional data has focused on pro- cesses of which the probabilist...
AbstractThe functional autoregressive process has become a useful tool in the analysis of functional...
In this paper we introduce a Random Walk test for Functional Autoregressive Processes of Order One. ...
D. Phil.There have been two rather distinct approaches to the analysis of time series: the time doma...
The thesis is dedicated to time series analysis for functional data and contains three original part...
Functional panels are collections of functional time series, and arise often in the study of high fr...
Functional time series analysis, whether based on time or frequency domain methodology, has traditio...
Abstract. We propose a general bootstrap procedure to approximate the null distri-bution of nonparam...
We develop a test for stationarity of a time series against the alternative of a time-changing covar...
Interest in functional time series has spiked in the recent past with papers covering both methodolo...
A frequency-domain statistic is introduced to test for stationarity versus stochastic or determinist...
We derive several tests for the presence of a periodic component in a time series of functions. We c...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
A framework for the asymptotic analysis of local power properties of tests of stationarity in time ...
The literature on time series of functional data has focused on processes of which the probabilistic...
The literature on time series of functional data has focused on pro- cesses of which the probabilist...
AbstractThe functional autoregressive process has become a useful tool in the analysis of functional...
In this paper we introduce a Random Walk test for Functional Autoregressive Processes of Order One. ...
D. Phil.There have been two rather distinct approaches to the analysis of time series: the time doma...
The thesis is dedicated to time series analysis for functional data and contains three original part...
Functional panels are collections of functional time series, and arise often in the study of high fr...
Functional time series analysis, whether based on time or frequency domain methodology, has traditio...
Abstract. We propose a general bootstrap procedure to approximate the null distri-bution of nonparam...
We develop a test for stationarity of a time series against the alternative of a time-changing covar...