This article compares five alternative methods for directly dealing with structural break uncertainty in forecasting the U.S. equity premium using 30 widely used bivariate and multivariate predictive regressions. We find that two recently developed methods – Robust Optimal Weights on Observations and Forecast Combination across Estimation Windows – outperform the conventional rolling window and postbreak estimation methods. This result indicates that very early historical information is beneficial for U.S. equity premium forecasting but should be discounted to incorporate structural break uncertainty
This article uses Bayesian marginal likelihood analysis to compare univariate models of the stock re...
We propose new real-time monitoring procedures for the emergence of end-of-sample predictive regimes...
This paper evaluates the predictability of monthly stock return using out-of-sample (multi-step ahea...
This study comprehensively investigates the uncertainty on parameter instability and model selection...
Estimation of models with structural breaks usually assumes a pre-specified number of breaks. Previo...
Abstract This article compares three estimates of the conditional equity premium using dividend and ...
This dissertation consists of three chapters. Collectively they attempt to investigate on how to bet...
This paper provides a forecasting methodology for estimating the market risk premium in Australia. W...
A long return history is useful in estimating the current equity premium even if the historical dist...
We provide an approach to forecasting the long-run (unconditional) distribution of equity returns ma...
We examine whether the stock market return is predictable from a range of financial indicators and m...
This thesis contributes towards the improvement of model-based econometric forecast performance unde...
For a comprehensive set of 21 equity premium predictors we find extreme variation in out-of-sample ...
Neely et al. (2014) have recently demonstrated how to efficiently combine information from a set of ...
We investigate the stability of predictive regression models for the U.S. equity premium. A new appr...
This article uses Bayesian marginal likelihood analysis to compare univariate models of the stock re...
We propose new real-time monitoring procedures for the emergence of end-of-sample predictive regimes...
This paper evaluates the predictability of monthly stock return using out-of-sample (multi-step ahea...
This study comprehensively investigates the uncertainty on parameter instability and model selection...
Estimation of models with structural breaks usually assumes a pre-specified number of breaks. Previo...
Abstract This article compares three estimates of the conditional equity premium using dividend and ...
This dissertation consists of three chapters. Collectively they attempt to investigate on how to bet...
This paper provides a forecasting methodology for estimating the market risk premium in Australia. W...
A long return history is useful in estimating the current equity premium even if the historical dist...
We provide an approach to forecasting the long-run (unconditional) distribution of equity returns ma...
We examine whether the stock market return is predictable from a range of financial indicators and m...
This thesis contributes towards the improvement of model-based econometric forecast performance unde...
For a comprehensive set of 21 equity premium predictors we find extreme variation in out-of-sample ...
Neely et al. (2014) have recently demonstrated how to efficiently combine information from a set of ...
We investigate the stability of predictive regression models for the U.S. equity premium. A new appr...
This article uses Bayesian marginal likelihood analysis to compare univariate models of the stock re...
We propose new real-time monitoring procedures for the emergence of end-of-sample predictive regimes...
This paper evaluates the predictability of monthly stock return using out-of-sample (multi-step ahea...