Several frequentist and Bayesian model averaging schemes, including a new one that simultaneously allows for parameter uncertainty, model uncertainty and time varying model weights, are compared in terms of forecast accuracy over a set of simulation experiments. Artificial data are generated, characterized by low predictability, structural instability, and fat tails, which is typical for many financial-economic time series. Sensitivity of results with respect to misspecification of the number of included predictors and the number of included models is explored. Given the set up of our experiments, time varying model weight schemes outperform other averaging schemes in terms of predictive gains both when the correlation among individual fore...
Forecasting commodities prices on vividly changing markets is a hard problem to tackle. However, bei...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...
We evaluate stock return predictability using a fully flexible Bayesian framework, which explicitl...
textabstractSeveral frequentist and Bayesian model averaging schemes, including a new one that simul...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
We extend the density combination approach of Billio et al. (2013) to feature combination weights th...
textabstractIn almost all cases a decision maker cannot identify ex ante the true process. This o...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
Forecasting is an indispensable element of operational research (OR) and an important aid to plannin...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
This paper deals with the problem of combining predictive densities for financial series. We summari...
We introduce a Loss Discounting Framework for model and forecast combination which generalises and c...
Forecasting commodities prices on vividly changing markets is a hard problem to tackle. However, bei...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...
We evaluate stock return predictability using a fully flexible Bayesian framework, which explicitl...
textabstractSeveral frequentist and Bayesian model averaging schemes, including a new one that simul...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
We extend the density combination approach of Billio et al. (2013) to feature combination weights th...
textabstractIn almost all cases a decision maker cannot identify ex ante the true process. This o...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
Forecasting is an indispensable element of operational research (OR) and an important aid to plannin...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
This paper deals with the problem of combining predictive densities for financial series. We summari...
We introduce a Loss Discounting Framework for model and forecast combination which generalises and c...
Forecasting commodities prices on vividly changing markets is a hard problem to tackle. However, bei...
textabstractThis paper develops a return forecasting methodology that allows for instabil ity in the...
We evaluate stock return predictability using a fully flexible Bayesian framework, which explicitl...