A Comprehensive Portfolio Construction Under Stochastic Environment

Prior research has established that idiosyncratic volatility of the securities prices exhibits a positive trend. This trend and other factors have made the merits of investment diversification and portfolio construction more compelling. A new optimization technique, a greedy algorithm, is proposed t...

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Main Author: Elshahat, Ahmed
Format: Others
Published: FIU Digital Commons 2008
Subjects:
Online Access:http://digitalcommons.fiu.edu/etd/187
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=1240&context=etd
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spelling ndltd-fiu.edu-oai-digitalcommons.fiu.edu-etd-12402018-07-19T03:31:32Z A Comprehensive Portfolio Construction Under Stochastic Environment Elshahat, Ahmed Prior research has established that idiosyncratic volatility of the securities prices exhibits a positive trend. This trend and other factors have made the merits of investment diversification and portfolio construction more compelling. A new optimization technique, a greedy algorithm, is proposed to optimize the weights of assets in a portfolio. The main benefits of using this algorithm are to: a) increase the efficiency of the portfolio optimization process, b) implement large-scale optimizations, and c) improve the resulting optimal weights. In addition, the technique utilizes a novel approach in the construction of a time-varying covariance matrix. This involves the application of a modified integrated dynamic conditional correlation GARCH (IDCC - GARCH) model to account for the dynamics of the conditional covariance matrices that are employed. The stochastic aspects of the expected return of the securities are integrated into the technique through Monte Carlo simulations. Instead of representing the expected returns as deterministic values, they are assigned simulated values based on their historical measures. The time-series of the securities are fitted into a probability distribution that matches the time-series characteristics using the Anderson-Darling goodness-of-fit criterion. Simulated and actual data sets are used to further generalize the results. Employing the S&P500 securities as the base, 2000 simulated data sets are created using Monte Carlo simulation. In addition, the Russell 1000 securities are used to generate 50 sample data sets. The results indicate an increase in risk-return performance. Choosing the Value-at-Risk (VaR) as the criterion and the Crystal Ball portfolio optimizer, a commercial product currently available on the market, as the comparison for benchmarking, the new greedy technique clearly outperforms others using a sample of the S&P500 and the Russell 1000 securities. The resulting improvements in performance are consistent among five securities selection methods (maximum, minimum, random, absolute minimum, and absolute maximum) and three covariance structures (unconditional, orthogonal GARCH, and integrated dynamic conditional GARCH). 2008-07-21T07:00:00Z text application/pdf http://digitalcommons.fiu.edu/etd/187 http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=1240&context=etd FIU Electronic Theses and Dissertations FIU Digital Commons Portfolio construction Optimization Algorithms Forecasting Volatility Stochastic model GARCH model
collection NDLTD
format Others
sources NDLTD
topic Portfolio construction
Optimization
Algorithms
Forecasting Volatility
Stochastic model
GARCH model
spellingShingle Portfolio construction
Optimization
Algorithms
Forecasting Volatility
Stochastic model
GARCH model
Elshahat, Ahmed
A Comprehensive Portfolio Construction Under Stochastic Environment
description Prior research has established that idiosyncratic volatility of the securities prices exhibits a positive trend. This trend and other factors have made the merits of investment diversification and portfolio construction more compelling. A new optimization technique, a greedy algorithm, is proposed to optimize the weights of assets in a portfolio. The main benefits of using this algorithm are to: a) increase the efficiency of the portfolio optimization process, b) implement large-scale optimizations, and c) improve the resulting optimal weights. In addition, the technique utilizes a novel approach in the construction of a time-varying covariance matrix. This involves the application of a modified integrated dynamic conditional correlation GARCH (IDCC - GARCH) model to account for the dynamics of the conditional covariance matrices that are employed. The stochastic aspects of the expected return of the securities are integrated into the technique through Monte Carlo simulations. Instead of representing the expected returns as deterministic values, they are assigned simulated values based on their historical measures. The time-series of the securities are fitted into a probability distribution that matches the time-series characteristics using the Anderson-Darling goodness-of-fit criterion. Simulated and actual data sets are used to further generalize the results. Employing the S&P500 securities as the base, 2000 simulated data sets are created using Monte Carlo simulation. In addition, the Russell 1000 securities are used to generate 50 sample data sets. The results indicate an increase in risk-return performance. Choosing the Value-at-Risk (VaR) as the criterion and the Crystal Ball portfolio optimizer, a commercial product currently available on the market, as the comparison for benchmarking, the new greedy technique clearly outperforms others using a sample of the S&P500 and the Russell 1000 securities. The resulting improvements in performance are consistent among five securities selection methods (maximum, minimum, random, absolute minimum, and absolute maximum) and three covariance structures (unconditional, orthogonal GARCH, and integrated dynamic conditional GARCH).
author Elshahat, Ahmed
author_facet Elshahat, Ahmed
author_sort Elshahat, Ahmed
title A Comprehensive Portfolio Construction Under Stochastic Environment
title_short A Comprehensive Portfolio Construction Under Stochastic Environment
title_full A Comprehensive Portfolio Construction Under Stochastic Environment
title_fullStr A Comprehensive Portfolio Construction Under Stochastic Environment
title_full_unstemmed A Comprehensive Portfolio Construction Under Stochastic Environment
title_sort comprehensive portfolio construction under stochastic environment
publisher FIU Digital Commons
publishDate 2008
url http://digitalcommons.fiu.edu/etd/187
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=1240&context=etd
work_keys_str_mv AT elshahatahmed acomprehensiveportfolioconstructionunderstochasticenvironment
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