Structural Breaks in Time Series
Alessandro Casini, Pierre Perron

TL;DR
This chapter reviews recent methodological advances in detecting and estimating structural breaks in linear time series models, emphasizing practical off-line testing methods applicable to various econometric contexts.
Contribution
It provides an updated overview of off-line methods for structural break detection, including recent developments like tests for common breaks and models with endogenous regressors.
Findings
Enhanced methods for testing structural changes in various models.
Inclusion of recent techniques such as Lasso-based methods and panel data approaches.
Guidance on practical implementation of break detection in econometrics.
Abstract
This chapter covers methodological issues related to estimation, testing and computation for models involving structural changes. Our aim is to review developments as they relate to econometric applications based on linear models. Substantial advances have been made to cover models at a level of generality that allow a host of interesting practical applications. These include models with general stationary regressors and errors that can exhibit temporal dependence and heteroskedasticity, models with trending variables and possible unit roots and cointegrated models, among others. Advances have been made pertaining to computational aspects of constructing estimates, their limit distributions, tests for structural changes, and methods to determine the number of changes present. A variety of topics are covered. The first part summarizes and updates developments described in an earlier…
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Taxonomy
TopicsForecasting Techniques and Applications · Complex Systems and Time Series Analysis · Monetary Policy and Economic Impact
