Robust min–max portfolio strategies for rival forecast and risk scenarios |
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Authors: | Ber Rustem, Robin G. Becker,Wolfgang Marty |
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Affiliation: | Berç Rustem, Robin G. Becker,Wolfgang Marty |
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Abstract: | We consider an extension of the Markowitz mean–variance optimization framework to multiple return and risk scenarios. It is well known that asset return forecasts and risk estimates are inherently inaccurate. The method proposed provides a means for considering rival representations of the future. The optimal portfolio is computed, simultaneously with the worst case, to take account of all rival scenarios. This is a min-max strategy which is essentially equivalent to a robust pooling of the scenarios. Robustness is ensured by the noninferiority of min–max. For example, a basic worst-case optimal return is guaranteed in view of multiple return scenarios. If robustness happens to have too high a cost, guided by the min–max pooling, it is also possible to explore other pooling alternatives. A min–max algorithm is used to solve the problem and illustrate the robust character of min–max with return and risk scenarios. We study the properties of the min–max risk–return frontier and compare with the potentially suboptimal worst-case where the investment strategy and the worst case are computed separately. |
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Keywords: | Risk management Robust decisions Guaranteed return Portfolio optimisation Multiple scenarios Worst-case analysis Min– max decisions |
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