Abstract

This paper surveys recent development in bootstrap methods and the modifications needed for their applicability in time series models. The paper discusses some guidelines for empirical researchers in econometric analysis of time series. Different sampling schemes for bootstrap data generation and different forms of bootstrap test statistics are discussed. The paper also discusses the applicability of direct bootstrapping of data in dynamic models and cointegrating regression models. It is argued that bootstrapping residuals is the preferable approach. The bootstrap procedures covered include the recursive bootstrap, the moving block bootstrap and the stationary bootstrap.

Keywords

Bootstrapping (finance)Series (stratigraphy)EconometricsComputer scienceTime seriesSampling (signal processing)Bootstrap aggregatingStatisticsMathematicsArtificial intelligenceMachine learning

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Year
1996
Type
article
Volume
15
Issue
2
Pages
115-158
Citations
282
Access
Closed

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Hongyi Li, Maddala (1996). Bootstrapping time series models. Econometric Reviews , 15 (2) , 115-158. https://doi.org/10.1080/07474939608800344

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DOI
10.1080/07474939608800344