Testing for Structural Breaks in Small Samples

In a recent paper, Bai and Perron (2006) demonstrate that their approach for testing for multiple structural breaks in time series works well in large samples, but they found substantial deviations in both the size and power of their tests in smaller samples. We propose modifying their methodology t...

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Bibliographic Details
Main Author: Antoshin, Sergei
Other Authors: Berg, Andrew, Souto, Marcos
Format: eBook
Language:English
Published: Washington, D.C. International Monetary Fund 2008
Series:IMF Working Papers
Subjects:
Wp
Online Access:
Collection: International Monetary Fund - Collection details see MPG.ReNa
Description
Summary:In a recent paper, Bai and Perron (2006) demonstrate that their approach for testing for multiple structural breaks in time series works well in large samples, but they found substantial deviations in both the size and power of their tests in smaller samples. We propose modifying their methodology to deal with small samples by using Monte Carlo simulations to determine sample-specific critical values under the each time the test is run. We draw on the results of our simulations to offer practical suggestions on handling serial correlation, model misspecification, and the use of alternative test statistics for sequential testing. We show that, for most types of data generating processes in samples with as low as 50 observations, our proposed modifications perform substantially better
Physical Description:27 pages
ISBN:9781451869378