A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion

An abundant amount of literature has documented the limitations of traditional unconstrained mean-variance optimization and Efficient Frontier (EF) considered as an estimation-error maximization that magnifies errors in parameter estimates. Originally introduced by Michaud (1998), empirical superio...

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Main Author: Anmar Al Wakil
Format: Article
Language:English
Published: SGH Warsaw School of Economics, Collegium of Economic Analysis 2021-04-01
Series:Econometric Research in Finance
Subjects:
Online Access:https://www.erfin.org/journal/index.php/erfin/article/view/131
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spelling doaj-c275cc62ec9f44b0a96af9917b793b482021-04-17T20:54:51ZengSGH Warsaw School of Economics, Collegium of Economic Analysis Econometric Research in Finance2451-19352451-23702021-04-016110.2478/erfin-2021-0003A Probabilistic-Based Portfolio Resampling Under the Mean-Variance CriterionAnmar Al Wakil0University of Paris-Est, France An abundant amount of literature has documented the limitations of traditional unconstrained mean-variance optimization and Efficient Frontier (EF) considered as an estimation-error maximization that magnifies errors in parameter estimates. Originally introduced by Michaud (1998), empirical superiority of portfolio resampling supposedly lies in the addressing of parameter uncertainty by averaging forecasts that are based on a large number of bootstrap replications. Nevertheless, averaging over resampled portfolio weights in order to obtain the unique Resampled Efficient Frontier (REF, U.S. patent number 6,003,018) has been documented as a debated statistical procedure. Alternatively, we propose a probabilistic extension of the Michaud resampling that we introduce as the Probabilistic Resampled Efficient Frontier (PREF). The originality of this work lies in addressing the information loss in the REF by proposing a geometrical three-dimensional representation of the PREF in the mean-variance-probability space. Interestingly, this geometrical representation illustrates a confidence region around the naive EF associated to higher probabilities; in particular for simulated Global-Mean-Variance portfolios. Furthermore, the confidence region becomes wider with portfolio return, as is illustrated by the dispersion of simulated Maximum-Mean portfolios. https://www.erfin.org/journal/index.php/erfin/article/view/131Efficient FrontierMean-Variance CriterionPortfolio ResamplingBaggingProbabilistic Approach
collection DOAJ
language English
format Article
sources DOAJ
author Anmar Al Wakil
spellingShingle Anmar Al Wakil
A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
Econometric Research in Finance
Efficient Frontier
Mean-Variance Criterion
Portfolio Resampling
Bagging
Probabilistic Approach
author_facet Anmar Al Wakil
author_sort Anmar Al Wakil
title A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
title_short A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
title_full A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
title_fullStr A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
title_full_unstemmed A Probabilistic-Based Portfolio Resampling Under the Mean-Variance Criterion
title_sort probabilistic-based portfolio resampling under the mean-variance criterion
publisher SGH Warsaw School of Economics, Collegium of Economic Analysis
series Econometric Research in Finance
issn 2451-1935
2451-2370
publishDate 2021-04-01
description An abundant amount of literature has documented the limitations of traditional unconstrained mean-variance optimization and Efficient Frontier (EF) considered as an estimation-error maximization that magnifies errors in parameter estimates. Originally introduced by Michaud (1998), empirical superiority of portfolio resampling supposedly lies in the addressing of parameter uncertainty by averaging forecasts that are based on a large number of bootstrap replications. Nevertheless, averaging over resampled portfolio weights in order to obtain the unique Resampled Efficient Frontier (REF, U.S. patent number 6,003,018) has been documented as a debated statistical procedure. Alternatively, we propose a probabilistic extension of the Michaud resampling that we introduce as the Probabilistic Resampled Efficient Frontier (PREF). The originality of this work lies in addressing the information loss in the REF by proposing a geometrical three-dimensional representation of the PREF in the mean-variance-probability space. Interestingly, this geometrical representation illustrates a confidence region around the naive EF associated to higher probabilities; in particular for simulated Global-Mean-Variance portfolios. Furthermore, the confidence region becomes wider with portfolio return, as is illustrated by the dispersion of simulated Maximum-Mean portfolios.
topic Efficient Frontier
Mean-Variance Criterion
Portfolio Resampling
Bagging
Probabilistic Approach
url https://www.erfin.org/journal/index.php/erfin/article/view/131
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