We consider model selection facing uncertainty over the choice of variables and the occurrence and timing of multiple location shifts. General-to-simple selection is extended by adding an impulse indicator for every observation to the set of candidate regressors: see Johansen and Nielsen (2009). We apply that approach to a fat-tailed distribution, and to processes with breaks: Monte Carlo experiments show its capability of detecting up to 20 shifts in 100 observations, while jointly selecting variables. An illustration to US real interest rates compares impulse-indicator saturation with the procedure in Bai and Perron (1998)
The aim of the paper is to consider the problem of selecting the number of breaks in the mean of a t...
This paper considers the issue of selecting the number of regressors and the number of structural br...
This paper develops a new approach to change-point modelling that allows the number of change-points...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Although a general unrestricted model may under-specify the data generation process, especially when...
Abstract: We take a Bayesian approach to model selection in regression models with structural break...
Although a general unrestricted model may under-specify the data generation process, especially when...
To capture location shifts in the context of model selection, we propose selecting significant step ...
To capture location shifts in the context of model selection, we propose selecting significant step ...
When a model under-specifies the data generation process, model selection can improve over estimatin...
It is argued that model selection and robust estimation should be handled jointly.Impulse indicator ...
This paper considers the issue of selecting the number of regressors and the number of structural br...
The aim of the paper is to consider the problem of selecting the number of breaks in the mean of a t...
This paper considers the issue of selecting the number of regressors and the number of structural br...
This paper develops a new approach to change-point modelling that allows the number of change-points...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
We consider selecting an econometric model when there is uncertainty over both the choice of variabl...
Preliminary version Several algorithms for indicator saturation are compared and found to have low p...
Although a general unrestricted model may under-specify the data generation process, especially when...
Abstract: We take a Bayesian approach to model selection in regression models with structural break...
Although a general unrestricted model may under-specify the data generation process, especially when...
To capture location shifts in the context of model selection, we propose selecting significant step ...
To capture location shifts in the context of model selection, we propose selecting significant step ...
When a model under-specifies the data generation process, model selection can improve over estimatin...
It is argued that model selection and robust estimation should be handled jointly.Impulse indicator ...
This paper considers the issue of selecting the number of regressors and the number of structural br...
The aim of the paper is to consider the problem of selecting the number of breaks in the mean of a t...
This paper considers the issue of selecting the number of regressors and the number of structural br...
This paper develops a new approach to change-point modelling that allows the number of change-points...