We derive forecasts for Markov switching models that are optimal in the MSFE sense by means of weighting observations. We provide analytic expressions of the weights conditional on the Markov states and conditional on state probabilities. This allows us to study the effect of uncertainty around states on forecasts. It emerges that, even in large samples, forecasting performance increases substantially when the construction of optimal weights takes uncertainty around states into account. Performance of the optimal weights is shown through simulations and an application to US GNP, where using optimal weights leads to significant reductions in MSFE
__Abstract__ is papers offers a theoretical explanation for the stylized fact that forecast combi...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...
In this article, we develop one- and two-component Markov regime-switching conditional volatility mo...
We derive forecasts for Markov switching models that are optimal in the MSFE sense by means of weigh...
We derive forecasts for Markov switching models that are optimal in the mean square forecast error (...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models general...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models general...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models genera...
© 2018 The Author(s) We perform a large-scale empirical study in order to compare the forecasting pe...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We perform a large-scale empirical study in order to compare the forecasting performances of single-...
This paper considers the problem of forecasting under continuous and discrete structural breaks and ...
We evaluate techniques for comparing the ability of Markov regime switching (MRS) models to fit unde...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
For modelling mixed-frequency data with business cycle pattern we introduce the Markovswitching Mixe...
__Abstract__ is papers offers a theoretical explanation for the stylized fact that forecast combi...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...
In this article, we develop one- and two-component Markov regime-switching conditional volatility mo...
We derive forecasts for Markov switching models that are optimal in the MSFE sense by means of weigh...
We derive forecasts for Markov switching models that are optimal in the mean square forecast error (...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models general...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models general...
This paper explores the forecasting abilities of Markov-Switching models. Although MS models genera...
© 2018 The Author(s) We perform a large-scale empirical study in order to compare the forecasting pe...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We perform a large-scale empirical study in order to compare the forecasting performances of single-...
This paper considers the problem of forecasting under continuous and discrete structural breaks and ...
We evaluate techniques for comparing the ability of Markov regime switching (MRS) models to fit unde...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
For modelling mixed-frequency data with business cycle pattern we introduce the Markovswitching Mixe...
__Abstract__ is papers offers a theoretical explanation for the stylized fact that forecast combi...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...
In this article, we develop one- and two-component Markov regime-switching conditional volatility mo...