In this paper we develop methodology for testing relevant hypotheses in a tuning-free way. Our main focus is on functional time series, but extensions to other settings are also discussed. Instead of testing for exact equality, for example for the equality of two mean functions from two independent time series, we propose to test a relevant deviation under the null hypothesis. In the two sample problem this means that an L2-distance between the two mean functions is smaller than a pre-specified threshold. For such hypotheses self-normalization, which was introduced by Shao (2010) and Shao and Zhang (2010) and is commonly used to avoid the estimation of nuisance parameters, is not directly applicable. We develop new self-normalized p...
Statistical inference in time series analysis has been an important subject in various fields includ...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
AbstractIn the functional regression model where the responses are curves, new tests for the functio...
Functional data Analysis has emerged as an important area of statistics which provides convenient an...
Functional data Analysis has emerged as an important area of statistics which provides convenient an...
<p>We propose a new self-normalized method for testing change points in the time series setting. Sel...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
This paper deals with two-sample tests for functional time series data, which have become widely av...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
We consider tests of serial independence for a sequence of functional observations. The new methods ...
Classical change point analysis aims at (1) detecting abrupt changes in the mean of a possibly non-...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
In the common time series model Xi,n = μ(i/n)+"i,n with non-stationary errors we consider the proble...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference in time series analysis has been an important subject in various fields includ...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
AbstractIn the functional regression model where the responses are curves, new tests for the functio...
Functional data Analysis has emerged as an important area of statistics which provides convenient an...
Functional data Analysis has emerged as an important area of statistics which provides convenient an...
<p>We propose a new self-normalized method for testing change points in the time series setting. Sel...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
This paper deals with two-sample tests for functional time series data, which have become widely av...
Most of the literature on change-point analysis by means of hypothesis testing considers hypotheses ...
We consider tests of serial independence for a sequence of functional observations. The new methods ...
Classical change point analysis aims at (1) detecting abrupt changes in the mean of a possibly non-...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
In the common time series model Xi,n = μ(i/n)+"i,n with non-stationary errors we consider the proble...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
Statistical inference in time series analysis has been an important subject in various fields includ...
A popular self-normalization (SN) approach in time series analysis uses the variance of a partial su...
AbstractIn the functional regression model where the responses are curves, new tests for the functio...