Static Mean-Variance Analysis with Uncertain Time Horizon
Lionel Martellini () and
Branko Uroševi\'{c} ()
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Lionel Martellini: EDHEC Risk and Asset Management Research Center, 400 Promenade des Anglais, BP 3116, 06202 Nice Cedex 3, France
Branko Uroševi\'{c}: Faculty of Economics, University of Belgrade, and South European Center for Contemporary Finance, Kameni\v{c}ka 6, 11 000 Belgrade, Serbia-Montenegro
Management Science, 2006, vol. 52, issue 6, 955-964
Abstract:
We generalize Markowitz analysis to the situations involving an uncertain exit time. Our approach preserves the form of the original problem in that an investor minimizes portfolio variance for a given level of the expected return. However, inputs are now given by the generalized expressions for mean and variance-covariance matrix involving moments of the random exit time in addition to the conditional moments of asset returns. Although efficient frontiers in the generalized and the standard Markowitz case may coincide under certain conditions, we demonstrate that, by means of an example, in general that is not true. In particular, portfolios efficient in the standard Markowitz sense can be inefficient in the generalized sense and vice versa. As a result, an investor facing an uncertain time horizon and investing as if her time of exit is certain would in general make suboptimal portfolio allocation decisions. Numerical simulations show that a significant efficiency loss can be induced by an improper use of standard mean-variance analysis when time horizon is uncertain.
Keywords: portfolio selection; uncertain time horizon; mean-variance analysis (search for similar items in EconPapers)
Date: 2006
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Citations: View citations in EconPapers (18)
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Persistent link: https://EconPapers.repec.org/RePEc:inm:ormnsc:v:52:y:2006:i:6:p:955-964
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