For a partial structural change in a linear regression model with a single break, we develop a continuous record asymptotic framework to build inference methods for the break date. We have T observations with a sampling frequency h over a fixed time horizon [0, N] , and let T with h 0 while keeping the time span N fixed. We impose very mild regularity conditions on an underlying continuous-time model assumed to generate the data. We consider the least-squares estimate of the break date and establish consistency and convergence rate. We provide a limit theory for shrinking magnitudes of shifts and locally increasing variances. The asymptotic distribution corresponds to the location of the extremum of a function of the quadratic variation of ...
We consider the problem of estimating and testing for multiple breaks in a single-equation framework...
The paper presents an approach to the analysis of data that contains (multiple) structural changes i...
Published in Econometric Reviews, 2020 July. https://doi.org/10.1080/07474938.2020.1788822</p
For a partial structural change in a linear regression model with a single break, we develop a conti...
This article covers methodological issues related to estimation, testing, and computation for models...
This paper considers various asymptotic approximations to the finite sample distribution of the esti...
This paper is concerned with robust estimation of change points in regrt!ssion models, possibly with...
This article considers constructing confidence intervals for the date of a structural break in linea...
This dissertation addresses various issues related to statistical inference in the context of param...
This paper revisits the least squares estimator of the linear regression with a structural break. We...
In this paper, we present a limiting distribution theory for the break point estimator in a linear r...
This paper proposes estimators of location and size of structural breaks in a, possibly dynamic, non...
Part I. Identification and Efficient Estimation: 1. Incredible structural inference Thomas J. Rothen...
The detection of (structural) breaks or the so called change point problem has drawn increasing atte...
There are a large number of tests for instability or breaks in coefficients in regression models des...
We consider the problem of estimating and testing for multiple breaks in a single-equation framework...
The paper presents an approach to the analysis of data that contains (multiple) structural changes i...
Published in Econometric Reviews, 2020 July. https://doi.org/10.1080/07474938.2020.1788822</p
For a partial structural change in a linear regression model with a single break, we develop a conti...
This article covers methodological issues related to estimation, testing, and computation for models...
This paper considers various asymptotic approximations to the finite sample distribution of the esti...
This paper is concerned with robust estimation of change points in regrt!ssion models, possibly with...
This article considers constructing confidence intervals for the date of a structural break in linea...
This dissertation addresses various issues related to statistical inference in the context of param...
This paper revisits the least squares estimator of the linear regression with a structural break. We...
In this paper, we present a limiting distribution theory for the break point estimator in a linear r...
This paper proposes estimators of location and size of structural breaks in a, possibly dynamic, non...
Part I. Identification and Efficient Estimation: 1. Incredible structural inference Thomas J. Rothen...
The detection of (structural) breaks or the so called change point problem has drawn increasing atte...
There are a large number of tests for instability or breaks in coefficients in regression models des...
We consider the problem of estimating and testing for multiple breaks in a single-equation framework...
The paper presents an approach to the analysis of data that contains (multiple) structural changes i...
Published in Econometric Reviews, 2020 July. https://doi.org/10.1080/07474938.2020.1788822</p