Building upon the continuous record asymptotic framework recently introduced by Casini and Perron (2020a) for inference in structural change models, we propose a Laplace-based (Quasi-Bayes) procedure for the construction of the estimate and confidence set for the date of a structural change. It is defined by an integration rather than an optimization-based method. A transformation of the least-squares criterion function is evaluated in order to derive a proper distribution, referred to as the Quasi-posterior. For a given choice of a loss function, the Laplace-type estimator is the minimizer of the expected risk with the expectation taken under the Quasi-posterior. Besides providing an alternative estimate that is more precise-lower mean absolute error (MAE) and lower root-mean squared error (RMSE)-than the usual least-squares one, the Quasi-posterior distribution can be used to construct asymptotically valid inference using the concept of Highest Density Region. The resulting Laplace-based inferential procedure is shown to have lower MAE and RMSE, and the confidence sets strike a better balance between empirical coverage rates and average lengths of the confidence sets relative to traditional long-span methods, whether the break size is small or large. (C) 2020 Elsevier B.V. All rights reserved.

Casini, A., Perron, P. (2021). Continuous record Laplace-based inference about the break date in structural change models. JOURNAL OF ECONOMETRICS, 224(1), 3-21 [10.1016/J.JECONOM.2020.05.020].

Continuous record Laplace-based inference about the break date in structural change models

Casini, Alessandro
;
2021-01-01

Abstract

Building upon the continuous record asymptotic framework recently introduced by Casini and Perron (2020a) for inference in structural change models, we propose a Laplace-based (Quasi-Bayes) procedure for the construction of the estimate and confidence set for the date of a structural change. It is defined by an integration rather than an optimization-based method. A transformation of the least-squares criterion function is evaluated in order to derive a proper distribution, referred to as the Quasi-posterior. For a given choice of a loss function, the Laplace-type estimator is the minimizer of the expected risk with the expectation taken under the Quasi-posterior. Besides providing an alternative estimate that is more precise-lower mean absolute error (MAE) and lower root-mean squared error (RMSE)-than the usual least-squares one, the Quasi-posterior distribution can be used to construct asymptotically valid inference using the concept of Highest Density Region. The resulting Laplace-based inferential procedure is shown to have lower MAE and RMSE, and the confidence sets strike a better balance between empirical coverage rates and average lengths of the confidence sets relative to traditional long-span methods, whether the break size is small or large. (C) 2020 Elsevier B.V. All rights reserved.
2021
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore SECS-P/05
English
Asymptotic distribution
Bias
Break date
Change-point
Generalized Laplace
Infill asymptotics
Semimartingale
Casini, A., Perron, P. (2021). Continuous record Laplace-based inference about the break date in structural change models. JOURNAL OF ECONOMETRICS, 224(1), 3-21 [10.1016/J.JECONOM.2020.05.020].
Casini, A; Perron, P
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/350085
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