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Forecasting the performance of hedge fund styles

Forecasting the performance of hedge fund styles
Forecasting the performance of hedge fund styles
This article predicts the relative performance of hedge fund investment styles using time-varying conditional stochastic dominance tests. These tests allow for the construction of dynamic trading strategies based on nonparametric density forecasts of hedge fund returns. During the recent financial turmoil, our tests predict a superior performance for the Global Macro investment style compared with the other strategies of ‘Directional Traders’. The Dedicated Short Bias investment style is stochastically dominated by the other directional styles. These results are confirmed by simple nonparametric tests constructed from realized excess returns. Further, by utilizing a cross-validation method for optimal bandwidth parameter selection, we discover the factors that have predictive power regarding the density of hedge fund returns. We observe that different factors have forecasting power for different regions of the returns distribution and, more importantly, that the Fung and Hsieh factors have power not only for describing the risk premium but also, if appropriately exploited, for density forecasting.
conditional density estimation, hedge fund styles, nonparametric methods, portfolio performance, stochastic dominance tests
0378-4266
2351-2365
Olmo, Jose
706f68c8-f991-4959-8245-6657a591056e
Sanso-Navarro, Marcos
39ed49fd-2d29-4763-898b-9117bf977956
Olmo, Jose
706f68c8-f991-4959-8245-6657a591056e
Sanso-Navarro, Marcos
39ed49fd-2d29-4763-898b-9117bf977956

Olmo, Jose and Sanso-Navarro, Marcos (2012) Forecasting the performance of hedge fund styles. Journal of Banking & Finance, 36 (8), 2351-2365. (doi:10.1016/j.jbankfin.2012.04.016).

Record type: Article

Abstract

This article predicts the relative performance of hedge fund investment styles using time-varying conditional stochastic dominance tests. These tests allow for the construction of dynamic trading strategies based on nonparametric density forecasts of hedge fund returns. During the recent financial turmoil, our tests predict a superior performance for the Global Macro investment style compared with the other strategies of ‘Directional Traders’. The Dedicated Short Bias investment style is stochastically dominated by the other directional styles. These results are confirmed by simple nonparametric tests constructed from realized excess returns. Further, by utilizing a cross-validation method for optimal bandwidth parameter selection, we discover the factors that have predictive power regarding the density of hedge fund returns. We observe that different factors have forecasting power for different regions of the returns distribution and, more importantly, that the Fung and Hsieh factors have power not only for describing the risk premium but also, if appropriately exploited, for density forecasting.

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More information

Published date: August 2012
Keywords: conditional density estimation, hedge fund styles, nonparametric methods, portfolio performance, stochastic dominance tests
Organisations: Economics

Identifiers

Local EPrints ID: 348631
URI: http://eprints.soton.ac.uk/id/eprint/348631
ISSN: 0378-4266
PURE UUID: 3c527c31-7878-494a-81e2-ec7ad30ee9ee
ORCID for Jose Olmo: ORCID iD orcid.org/0000-0002-0437-7812

Catalogue record

Date deposited: 18 Feb 2013 09:57
Last modified: 15 Mar 2024 03:46

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Contributors

Author: Jose Olmo ORCID iD
Author: Marcos Sanso-Navarro

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