Detecting long-range dependence in non-stationary time series
Author(s) -
Holger Dette,
Philip Preuß,
Kemal Sen
Publication year - 2017
Publication title -
electronic journal of statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.482
H-Index - 54
ISSN - 1935-7524
DOI - 10.1214/17-ejs1262
Subject(s) - mathematics , asymptotic distribution , series (stratigraphy) , range (aeronautics) , parametric statistics , quantile , consistency (knowledge bases) , stationary process , econometrics , statistics , statistical hypothesis testing , null hypothesis , long memory , nonparametric statistics , estimator , volatility (finance) , paleontology , materials science , geometry , composite material , biology
An important problem in time series analysis is the discrimination between non-stationarity and longrange dependence. Most of the literature considers the problem of testing specic parametric hypotheses of non-stationarity (such as a change in the mean) against long-range dependent stationary alternatives. In this paper we suggest a simple nonparametric approach, which can be used to test the null-hypothesis of a general non-stationary short-memory against the alternative of a non-stationary long-memory process. This test is working in the spectral domain and uses a sieve of approximating tvFARIMA models to estimate the time varying long-range dependence parameter nonparametrically. We prove uniform consistency of this estimate and asymptotic normality of an averaged version. These results yield a simple test (based on the quantiles of the standard normal distribution), and it is demonstrated in a simulation study that - despite of its nonparametric nature - the new test outperforms the currently available methods, which are constructed to discriminate between specic parametric hypotheses of non-stationarity short- and stationarity long-range dependence.
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