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Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage

The thesis considers the general area of robust portfolio construction. In particular the thesis considers two techniques in this area that aim to improve portfolio construction, and consequently portfolio performance. The first technique focusses on estimation error in the sample covariance (one of...

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Main Author: Combrink, James
Other Authors: Bradfield, David
Format: Thesis
Language:English
Published: Department of Statistical Sciences 2018
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access_status_str Open Access
author Combrink, James
author2 Bradfield, David
author_browse Bradfield, David
Combrink, James
author_facet Bradfield, David
Combrink, James
author_sort Combrink, James
collection Thesis
description The thesis considers the general area of robust portfolio construction. In particular the thesis considers two techniques in this area that aim to improve portfolio construction, and consequently portfolio performance. The first technique focusses on estimation error in the sample covariance (one of portfolio optimisation inputs). In particular shrinkage techniques applied to the sample covariance matrix are considered and the merits thereof are assessed. The second technique considered in the thesis focusses on the portfolio construction/optimisation process itself. Here the thesis adopted the 'resampled efficiency' proposal of Michaud (1989) which utilises Monte Carlo simulation from the sampled distribution to generate a range of resampled efficient frontiers. Thereafter the thesis assesses the merits of combining these two techniques in the portfolio construction process. Portfolios are constructed using a quadratic programming algorithm requiring two inputs: (i) expected returns; and (ii) cross-sectional behaviour and individual risk (the covariance matrix). The output is a set of 'optimal' investment weights, one per each share who's returns were fed into the algorithm. This thesis looks at identifying and removing avoidable risk through a statistical robustification of the algorithms and attempting to improve upon the 'optimal' weights provided by the algorithms. The assessment of performance is done by comparing the out-of-period results with standard optimisation results, which highly sensitive and prone to sampling-error and extreme weightings. The methodology looks at applying various shrinkage techniques onto the historical covariance matrix; and then taking a resampling portfolio optimisation approach using the shrunken matrix. We use Monte-Carlo simulation techniques to replicate sets of statistically equivalent portfolios, find optimal weightings for each; and then through aggregation of these reduce the sensitivity to the historical time-series anomalies. We also consider the trade-off between sampling-error and specification-error of models.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:31:54.917Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2018
publishDateRange 2018
publishDateSort 2018
publisher Department of Statistical Sciences
publisherStr Department of Statistical Sciences
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/27296 Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage Combrink, James Bradfield, David Advanced Analytics and Data Sciences The thesis considers the general area of robust portfolio construction. In particular the thesis considers two techniques in this area that aim to improve portfolio construction, and consequently portfolio performance. The first technique focusses on estimation error in the sample covariance (one of portfolio optimisation inputs). In particular shrinkage techniques applied to the sample covariance matrix are considered and the merits thereof are assessed. The second technique considered in the thesis focusses on the portfolio construction/optimisation process itself. Here the thesis adopted the 'resampled efficiency' proposal of Michaud (1989) which utilises Monte Carlo simulation from the sampled distribution to generate a range of resampled efficient frontiers. Thereafter the thesis assesses the merits of combining these two techniques in the portfolio construction process. Portfolios are constructed using a quadratic programming algorithm requiring two inputs: (i) expected returns; and (ii) cross-sectional behaviour and individual risk (the covariance matrix). The output is a set of 'optimal' investment weights, one per each share who's returns were fed into the algorithm. This thesis looks at identifying and removing avoidable risk through a statistical robustification of the algorithms and attempting to improve upon the 'optimal' weights provided by the algorithms. The assessment of performance is done by comparing the out-of-period results with standard optimisation results, which highly sensitive and prone to sampling-error and extreme weightings. The methodology looks at applying various shrinkage techniques onto the historical covariance matrix; and then taking a resampling portfolio optimisation approach using the shrunken matrix. We use Monte-Carlo simulation techniques to replicate sets of statistically equivalent portfolios, find optimal weightings for each; and then through aggregation of these reduce the sensitivity to the historical time-series anomalies. We also consider the trade-off between sampling-error and specification-error of models. 2018-02-05T13:01:03Z 2018-02-05T13:01:03Z 2017 Master Thesis Masters MSc http://hdl.handle.net/11427/27296 eng application/pdf Department of Statistical Sciences Faculty of Science University of Cape Town
spellingShingle Advanced Analytics and Data Sciences
Combrink, James
Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
thesis_degree_str Master's
title Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
title_full Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
title_fullStr Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
title_full_unstemmed Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
title_short Robust portfolio construction: using resampled efficiency in combination with covariance shrinkage
title_sort robust portfolio construction using resampled efficiency in combination with covariance shrinkage
topic Advanced Analytics and Data Sciences
url http://hdl.handle.net/11427/27296
work_keys_str_mv AT combrinkjames robustportfolioconstructionusingresampledefficiencyincombinationwithcovarianceshrinkage