Efstathios Paparoditis, Lea Wegner, Martin Wendler
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Functional Sieve Bootstrap for the Partial Sum Process with Application to Change-Point Detection without Dimension Reduction
Change-points in functional time series can be detected using the
CUSUM-statistic, which is a non-linear functional of the partial sum process.
Various methods have been proposed to obtain critical values for this
statistic. In this paper we use the functional autoregressive sieve bootstrap
to imitate the behavior of the partial sum process and we show that this
procedure asymptotically correct estimates critical values under the null
hypothesis. We also establish the consistency of the corresponding bootstrap
based test under local alternatives. The finite sample performance of the
procedure is studied via simulations under the null -hypothesis and under the
alternative.