Whether it is possible to improve point, quantile and density forecasts via quantile forecast combinations is tested. The models we employ are quantile autoregressive and mean regression models augmented with a plethora of macroeconomic and financial variables. Complete subset combinations of both linear and quantile forecasts enable us to efficiently summarize the information content in the candidate predictors. We also develop a recursive algorithm that selects, in real time, the best complete subset for each predictive regression quantile. We provide two forecasting applications; one related to stock market return forecasting and the second on realised volatility forecasting. We show that our approach delivers statistically and economica...
We propose a quantile regression approach to equity premium forecasting. Robust point forecasts are ...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
Whether it is possible to improve realised volatility forecasts by conditioning on macroeconomic and...
This paper tests whether it is possible to improve point, quantile and density forecasts of realised...
This paper tests whether it is possible to improve point, quantile and density forecasts of realised...
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
In this paper, we discuss a Bayesian approach to quantile autoregressive (QAR) time series model est...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Motivated by a broad range of potential applications, we address the quantile prediction problem of ...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
We propose a quantile regression approach to equity premium forecasting. Robust point forecasts are ...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
Whether it is possible to improve realised volatility forecasts by conditioning on macroeconomic and...
This paper tests whether it is possible to improve point, quantile and density forecasts of realised...
This paper tests whether it is possible to improve point, quantile and density forecasts of realised...
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
This paper extends the complete subset linear regression framework to a quantile regression setting....
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
In this paper, we discuss a Bayesian approach to quantile autoregressive (QAR) time series model est...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Motivated by a broad range of potential applications, we address the quantile prediction problem of ...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
We propose a quantile regression approach to equity premium forecasting. Robust point forecasts are ...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...