Economic agents often face situations, where there are multiple competing fore- casts available. Despite five decades of research on forecast combinations, most of the methods introduced so far fail to outperform the equal weights forecast combination in empirical applications. In this study, we gather a wide spectrum of forecast combination methods and reexamine these findings in two different classical economic times series forecasting applications. These include out-of- sample combining forecasts from the ECB Survey of Professional Forecasters and forecasts of the realized volatility of the U.S. Treasury futures log-returns. We asses the performance of artificial predictions markets, a class of machine learning methods, which has not yet...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
Based on Monte Carlo simulations using both stationary and nonstationary data, a model selection app...
Nowadays, there is a wide range of forecasting methods and forecasters encounter several challenges ...
Economic agents often face situations, where there are multiple competing fore- casts available. Des...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
This paper investigates the use of Artificial Neural Networks (ANNs) to combine time series forecast...
We discuss the theoretical machinery involved in predicting financial market movements using an arti...
We discuss the theoretical machinery involved in predicting financial market movements using an arti...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
The paper seeks to answer the question of how price forecasting can contribute to which techniques g...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlNon-parametric forecast...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
An accurate forecast about the future is vital in time series analysis, butit is always challenging ...
We consider combinations of subjective survey forecasts and model-based forecasts from linear and no...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
Based on Monte Carlo simulations using both stationary and nonstationary data, a model selection app...
Nowadays, there is a wide range of forecasting methods and forecasters encounter several challenges ...
Economic agents often face situations, where there are multiple competing fore- casts available. Des...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
This paper investigates the use of Artificial Neural Networks (ANNs) to combine time series forecast...
We discuss the theoretical machinery involved in predicting financial market movements using an arti...
We discuss the theoretical machinery involved in predicting financial market movements using an arti...
Financial time series forecasting is a popular application of machine learning methods. Previous stu...
In recent years, machine learning algorithms have become increasingly popular in financial forecasti...
The paper seeks to answer the question of how price forecasting can contribute to which techniques g...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/cesdp2016.htmlNon-parametric forecast...
The volatile characteristics of the tanker market pose challenges to forecasting. In addition, the v...
An accurate forecast about the future is vital in time series analysis, butit is always challenging ...
We consider combinations of subjective survey forecasts and model-based forecasts from linear and no...
Despite the extent of a theoretical framework in financial market studies, a vast majorityof the tra...
Based on Monte Carlo simulations using both stationary and nonstationary data, a model selection app...
Nowadays, there is a wide range of forecasting methods and forecasters encounter several challenges ...