There are a large number of tests for instability or breaks in coefficients in regression models designed for different possible departures from a stable regression. We make two contributions to this literature. First, we provide conditions under which optimal tests are asymptotically equivalent. Our conditions allow for models with many or relatively few breaks, clustered breaks, regularly occurring breaks or smooth transitions to changes in the regression coefficients. Thus we show nothing is gained asymptotically by knowing the exact breaking process. Second, we provide a statistic that is simple to compute, avoids any need for searching over high dimensions when there are many breaks, is valid for a wide range of data generating process...
This article covers methodological issues related to estimation, testing, and computation for models...
Testing for structural breaks in time series regressions with heavy-tailed disturbance
Abstract: This paper considers tests of parameters instability and structural change with known, unk...
There are a large number of tests for instability or breaks in coefficients in regression models des...
In this paper we develop a simple procedure which delivers tests for the pres-ence of a broken trend...
Abstract. Testing for structural stability has attracted a lot of attention in theoretical and appli...
This paper considers tests for structural instability of short duration, such as at the end of the s...
We consider the problem of constructing confidence sets for the date of a single break in a linear t...
Abstract. This paper proposes several new tests for structural change in the multivariate linear reg...
There are a large number of tests for parameter instability designed for specific types of unstable ...
Structural break tests for regression models are sensitive to model misspecification. We show—...
This paper introduces a new test for structural instability among only some individuals at the end o...
In this paper we propose tests for the null hypothesis that a time series process displays a constan...
eScholarship provides open access, scholarly publishing services to the University of California and...
We revisit classical asymptotics when testing for a structural break in linear regression models by ...
This article covers methodological issues related to estimation, testing, and computation for models...
Testing for structural breaks in time series regressions with heavy-tailed disturbance
Abstract: This paper considers tests of parameters instability and structural change with known, unk...
There are a large number of tests for instability or breaks in coefficients in regression models des...
In this paper we develop a simple procedure which delivers tests for the pres-ence of a broken trend...
Abstract. Testing for structural stability has attracted a lot of attention in theoretical and appli...
This paper considers tests for structural instability of short duration, such as at the end of the s...
We consider the problem of constructing confidence sets for the date of a single break in a linear t...
Abstract. This paper proposes several new tests for structural change in the multivariate linear reg...
There are a large number of tests for parameter instability designed for specific types of unstable ...
Structural break tests for regression models are sensitive to model misspecification. We show—...
This paper introduces a new test for structural instability among only some individuals at the end o...
In this paper we propose tests for the null hypothesis that a time series process displays a constan...
eScholarship provides open access, scholarly publishing services to the University of California and...
We revisit classical asymptotics when testing for a structural break in linear regression models by ...
This article covers methodological issues related to estimation, testing, and computation for models...
Testing for structural breaks in time series regressions with heavy-tailed disturbance
Abstract: This paper considers tests of parameters instability and structural change with known, unk...