A comparison of alternative asymptotic frameworks to analyse a structural change in a linear time trend
This paper considers various asymptotic approximations to the finite sample distribution of the estimate of the break date in a simple one-break model for a linear trend function that exhibits a change in slope, with or without a concurrent change in intercept. The noise component is either stationary or has an autoregressive unit root. Our main focus is on comparing the so-called "bounded-trend" and "unbounded-trend" asymptotic frameworks. Not surprisingly, the "bounded-trend" asymptotic framework is of little use when the noise component is integrated. When the noise component is stationary, we obtain the following results. If the intercept does not change and is not allowed to change in the estimation, both frameworks yield the same approximation. However, when the intercept is allowed to change, whether or not it actually changes in the data, the "bounded-trend" asymptotic framework completely misses important features of the finite sample distribution of the estimate of the break date, especially the pronounced bimodality that was uncovered by Perron and Zhu (2005) and shown to be well captured using the "unbounded-trend" asymptotic framework. Simulation experiments confirm our theoretical findings, which expose the drawbacks of using the " bounded-trend" asymptotic framework in the context of structural change models. Copyright Royal Economic Society 2006
Year of publication: |
2006
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Authors: | Deng, Ai ; Perron, Pierre |
Published in: |
Econometrics Journal. - Royal Economic Society - RES. - Vol. 9.2006, 3, p. 423-447
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Publisher: |
Royal Economic Society - RES |
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