Article ID Journal Published Year Pages File Type
9555311 Journal of Econometrics 2005 44 Pages PDF
Abstract
The paper considers tests for structural change in time series regression models where both regressors and residuals may exhibit long range dependence. The limiting distribution of the test statistic depends on unknown parameters. While the unknown parameters can be consistently estimated and asymptotic critical values obtained by simulation, the paper proposes an alternative approach of approximating the distribution of the test statistic by a bootstrap procedure. The asymptotic validity of bootstrap is shown and the performance of the testing procedure is examined in a simple Monte Carlo experiment.
Related Topics
Physical Sciences and Engineering Mathematics Statistics and Probability
Authors
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