AbstractThe functional autoregressive process has become a useful tool in the analysis of functional time series data. It is defined by the equation Xn+1=ΨXn+εn+1, in which the observations Xn and errors εn are curves, and Ψ is an operator. To ensure meaningful inference and prediction based on this model, it is important to verify that the operator Ψ does not change with time. We propose a method for testing the constancy of Ψ against a change-point alternative which uses the functional principal component analysis. The test statistic is constructed to have a well-known asymptotic distribution, but the asymptotic justification of the procedure is very delicate. We develop a new truncation approach which together with Mensov’s inequality ca...
Many sequentially observed functional data objects are available only at the times of certain events...
Abstract. In this paper for a credit cards payment system as robust predictor of transactions number...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
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. ...
We propose new tests for the correct specification of functional models in terms of transformed resi...
There have been several advances in statistical inference and computation procedures, whereas advanc...
The thesis is dedicated to time series analysis for functional data and contains three original part...
Interest in functional time series has spiked in the recent past with papers covering both methodolo...
Classical functional data analysis (FDA) is based on directly observed random curves. However, in a ...
This thesis is focussed on two areas of statistics, change-point analysis and functional data analys...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
Principal component analysis (PCA) has become a fundamental tool of functional data analysis. It rep...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Functional data objects are usually collected sequentially over time exhibiting forms of dependence....
Many sequentially observed functional data objects are available only at the times of certain events...
Abstract. In this paper for a credit cards payment system as robust predictor of transactions number...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...
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. ...
We propose new tests for the correct specification of functional models in terms of transformed resi...
There have been several advances in statistical inference and computation procedures, whereas advanc...
The thesis is dedicated to time series analysis for functional data and contains three original part...
Interest in functional time series has spiked in the recent past with papers covering both methodolo...
Classical functional data analysis (FDA) is based on directly observed random curves. However, in a ...
This thesis is focussed on two areas of statistics, change-point analysis and functional data analys...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
Principal component analysis (PCA) has become a fundamental tool of functional data analysis. It rep...
Functional principal component analysis (FPCA) has become the most widely used dimension reduction t...
Functional data objects are usually collected sequentially over time exhibiting forms of dependence....
Many sequentially observed functional data objects are available only at the times of certain events...
Abstract. In this paper for a credit cards payment system as robust predictor of transactions number...
We address the problem of dimension reduction for time series of functional data (Xt:t∈Z). Such func...