24
6

A distribution free test for changes in the trend function of locally stationary processes

Abstract

In the common time series model Xi,n=μ(i/n)+εi,nX_{i,n} = \mu (i/n) + \varepsilon_{i,n} with non-stationary errors we consider the problem of detecting a significant deviation of the mean function μ\mu from a benchmark g(μ)g (\mu ) (such as the initial value μ(0)\mu (0) or the average trend 01μ(t)dt\int_{0}^{1} \mu (t) dt). The problem is motivated by a more realistic modelling of change point analysis, where one is interested in identifying relevant deviations in a smoothly varying sequence of means (μ(i/n))i=1,,n (\mu (i/n))_{i =1,\ldots ,n } and cannot assume that the sequence is piecewise constant. A test for this type of hypotheses is developed using an appropriate estimator for the integrated squared deviation of the mean function and the threshold. By a new concept of self-normalization adapted to non-stationary processes an asymptotically pivotal test for the hypothesis of a relevant deviation is constructed. The results are illustrated by means of a simulation study and a data example.

View on arXiv
Comments on this paper