Forecasting stock returns with large dimensional factor models |
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Affiliation: | 1. Department of Economics, University of Graz, Universitaetsstrasse 15/F4, 8010 Graz, Austria;2. Faculty of Actuarial Science and Insurance, Cass Business School, 106 Bunhill Row, London, EC1Y8TZ, UK;3. Geneva School of Economics and Management, Université de Genève, Bd du Pont d’Arve 40, 1211 Genève 4, Switzerland |
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Abstract: | ![]() We study equity premium out-of-sample predictability by extracting the information contained in a high number of macroeconomic predictors via large dimensional factor models. We compare the well-known factor model with a static representation of the common components with the Generalized Dynamic Factor Model, which accounts for time series dependence in the common components. Using statistical and economic evaluation criteria, we empirically show that the Generalized Dynamic Factor Model helps predicting the equity premium. Exploiting the link between business cycle and return predictability, we find accurate predictions also by combining rolling and recursive forecasts in real-time. |
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Keywords: | Stock returns forecasting Factor model Large data sets Forecast evaluation |
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