Hedge Fund Return Predictability in the Presence of Model Risk

Autor: Christos Argyropoulos, Teng Zheng, Ekaterini Panopoulou, Nikolaos Voukelatos
Jazyk: angličtina
Rok vydání: 2022
Předmět:
ISSN: 1351-847X
Popis: Hedge funds implement elaborate investment strategies that include a variety of positions and assets. As a result, there is signifcant time variation in the set of risk factors and their respective loadings which in turn introduces severe model risk in any attempt to model and forecast hedge fund returns. In this study, we investigate the statistical and economic value of incorporating heteroscedasticity, non-normality, time-varying parameters, model selection risk and parameter estimation risk jointly in hedge fund return forecasting and fund of funds construction. Parameter estimation risk is dealt with a time-varying parameter structure, while model selection uncertainty is mitigated by model averaging or model selection. We adopt a dynamic model averaging approach along with the conventional Bayesian averaging technique. Our empirical results suggest that accounting for model risk can signifcantly improve the forecasting accuracy of hedge fund returns and, consequently, the performance of funds of hedge funds.
Databáze: OpenAIRE