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Journal ArticleDOI

Residual‐Based Block Bootstrap for Unit Root Testing

Efstathios Paparoditis, +1 more
- 01 May 2003 - 
- Vol. 71, Iss: 3, pp 813-855
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TLDR
In this article, a nonparametric, residual-based block bootstrap procedure is proposed in the context of testing for integrated (unit root) time series, which is based on weak assumptions on the dependence structure of the stationary process driving the random walk.
Abstract
A nonparametric, residual-based block bootstrap procedure is proposed in the context of testing for integrated (unit root) time series. The resampling procedure is based on weak assumptions on the dependence structure of the stationary process driving the random walk and successfully generates unit root integrated pseudo-series retaining the important characteristics of the data. It is more general than previous bootstrap approaches to the unit root problem in that it allows for a very wide class of weakly dependent processes and it is not based on any parametric assumption on the process generating the data. As a consequence the procedure can accurately capture the distribution of many unit root test statistics proposed in the literature. Large sample theory is developed and the asymptotic validity of the block bootstrap-based unit root testing is shown via a bootstrap functional limit theorem. Applications to some particular test statistics of the unit root hypothesis, i.e., least squares and Dickey-Fuller type statistics are given. The power properties of our procedure are investigated and compared to those of alternative bootstrap approaches to carry out the unit root test. Some simulations examine the finite sample performance of our procedure.

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Citations
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Combining non-cointegration tests

TL;DR: The local power of the new meta tests are demonstrated to be in general almost as high as that of the most powerful of the underlying tests.
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The carbon Kuznets curve: A cloudy picture emitted by bad econometrics?

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Journal ArticleDOI

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TL;DR: It is argued that methods for implementing the bootstrap with time‐series data are not as well understood as methods for data that are independent random samples, and there is a considerable need for further research.
Journal ArticleDOI

The Impact of Bootstrap Methods on Time Series Analysis

TL;DR: The availability of valid nonparametric inference procedures based on resampling and/or subsampling has freed practitioners from the necessity of resorting to simplifying assumptions such as normality or linearity that may be misleading.
Book ChapterDOI

Bootstrap Hypothesis Testing

TL;DR: In most cases of interest to econometricians, however, the distribution of the test statistic that we use is not known as discussed by the authors, and therefore we therefore have to compare the results of our tests with those of the coefficients of a linear regression model.
References
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Journal ArticleDOI

Distribution of the Estimators for Autoregressive Time Series with a Unit Root

TL;DR: In this article, the limit distributions of the estimator of p and of the regression t test are derived under the assumption that p = ± 1, where p is a fixed constant and t is a sequence of independent normal random variables.
Journal ArticleDOI

Testing for a Unit Root in Time Series Regression

TL;DR: In this article, the authors proposed new tests for detecting the presence of a unit root in quite general time series models, which accommodate models with a fitted drift and a time trend so that they may be used to discriminate between unit root nonstationarity and stationarity about a deterministic trend.
Book

Convergence of Probability Measures

TL;DR: Weak Convergence in Metric Spaces as discussed by the authors is one of the most common modes of convergence in metric spaces, and it can be seen as a form of weak convergence in metric space.
Journal ArticleDOI

Time Series Analysis.

Book ChapterDOI

Time Series Analysis

TL;DR: This paper provides a concise overview of time series analysis in the time and frequency domains with lots of references for further reading.
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