Several Bayesian model combination schemes, including some novel approaches that simultaneously allow for parameter uncertainty, model uncertainty and robust time varying model weights, are compared in terms of forecast accuracy and economic gains using financial and macroeconomic time series. The results indicate that the proposed time varying model weight schemes outperform other combination schemes in terms of predictive and economic gains. In an empirical application using returns on the S&P 500 index, time varying model weights provide improved forecasts with substantial economic gains in an investment strategy including transaction costs. Another empirical example refers to forecasting US economic growth over the business cycle. It su...
markdownabstract__Abstract__ Time varying patterns in US growth are analyzed using various univar...
We propose a multivariate combination approach to prediction based on a distributional state space r...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...
textabstractSeveral Bayesian model combination schemes, including some novel approaches that simulta...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
textabstractSeveral frequentist and Bayesian model averaging schemes, including a new one that simul...
Forecasting commodities prices on vividly changing markets is a hard problem to tackle. However, bei...
This paper considers the problem of forecasting in dynamic factor models using Bayesian model averag...
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model a...
This paper estimates and forecasts U.S. business cycle turning points with state-level data. The pro...
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model a...
This paper estimates and forecasts U.S. business cycle turning points with state-level data. The pro...
We propose a novel Bayesian model combination approach where the combination weights depend on the p...
We describe Bayesian models for economic and financial time series that use regressors sampled at hi...
markdownabstract__Abstract__ Time varying patterns in US growth are analyzed using various univar...
We propose a multivariate combination approach to prediction based on a distributional state space r...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...
textabstractSeveral Bayesian model combination schemes, including some novel approaches that simulta...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
textabstractSeveral frequentist and Bayesian model averaging schemes, including a new one that simul...
Forecasting commodities prices on vividly changing markets is a hard problem to tackle. However, bei...
This paper considers the problem of forecasting in dynamic factor models using Bayesian model averag...
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model a...
This paper estimates and forecasts U.S. business cycle turning points with state-level data. The pro...
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model a...
This paper estimates and forecasts U.S. business cycle turning points with state-level data. The pro...
We propose a novel Bayesian model combination approach where the combination weights depend on the p...
We describe Bayesian models for economic and financial time series that use regressors sampled at hi...
markdownabstract__Abstract__ Time varying patterns in US growth are analyzed using various univar...
We propose a multivariate combination approach to prediction based on a distributional state space r...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...