We propose a novel Bayesian model combination approach where the combination weights depend on the past forecasting performance of the individual models entering the combination through a utility-based objective function. We use this approach in the context of stock return predictability and optimal portfolio decisions, and investigate its forecasting performance relative to a host of existing combination schemes. We find that our method produces markedly more accurate predictions than the existing model combinations, both in terms of statistical and economic measures of out-of-sample predictability. We also investigate the role of our model combination method in the presence of model instabilities, by considering predictive regressions tha...
In predicting conditional covariance matrices of financial portfolios, practitioners are required to...
This paper adopts a Bayesian Model Averaging procedure to forecast excess returns. With a dataset co...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
We propose a novel Bayesian model combination approach where the combination weights depend on the p...
We extend the density combination approach of Billio et al. (2013) to feature combination weights th...
We employ a statistical criterion (out-of-sample hit rate) and a financial market measure (portfolio...
A novel dynamic asset-allocation approach is proposed where portfolios as well as portfolio strategi...
This paper deals with the problem of combining predictive densities for financial series. We summari...
We develop two dynamic Bayesian portfolio allocation models that address questions of learning and m...
A dynamic asset-allocation model is specified in probabilistic terms as a combination of return dist...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
A dynamic asset-allocation model is specified in probabilistic terms as a combination of return dist...
We consider forecast combination and, indirectly, model selection for VAR models when there is uncer...
Several frequentist and Bayesian model averaging schemes, including a new one that simultaneously al...
In predicting conditional covariance matrices of financial portfolios, practitioners are required to...
This paper adopts a Bayesian Model Averaging procedure to forecast excess returns. With a dataset co...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...
We propose a novel Bayesian model combination approach where the combination weights depend on the p...
We extend the density combination approach of Billio et al. (2013) to feature combination weights th...
We employ a statistical criterion (out-of-sample hit rate) and a financial market measure (portfolio...
A novel dynamic asset-allocation approach is proposed where portfolios as well as portfolio strategi...
This paper deals with the problem of combining predictive densities for financial series. We summari...
We develop two dynamic Bayesian portfolio allocation models that address questions of learning and m...
A dynamic asset-allocation model is specified in probabilistic terms as a combination of return dist...
Several Bayesian model combination schemes, including some novel approaches that simultaneously allo...
A dynamic asset-allocation model is specified in probabilistic terms as a combination of return dist...
We consider forecast combination and, indirectly, model selection for VAR models when there is uncer...
Several frequentist and Bayesian model averaging schemes, including a new one that simultaneously al...
In predicting conditional covariance matrices of financial portfolios, practitioners are required to...
This paper adopts a Bayesian Model Averaging procedure to forecast excess returns. With a dataset co...
Portfolio selection techniques must provide decision-makers with a dynamic model framework that inco...