Modelling of multiple constraints portfolio optimization using modified particle swarm optimization

In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads towards the best selection and diversification of investments. Portfolio optimization involves the objectives (mean, variance or Sharp Ratio (SR)) and constraints (budget, short sell, outliers, cardin...

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Main Author: Zaheer, Kashif
Format: Thesis
Language:English
Published: 2020
Subjects:
Online Access:http://eprints.utm.my/102421/1/KashifZaheerPFS2021.pdf.pdf
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author Zaheer, Kashif
author_facet Zaheer, Kashif
author_sort Zaheer, Kashif
description In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads towards the best selection and diversification of investments. Portfolio optimization involves the objectives (mean, variance or Sharp Ratio (SR)) and constraints (budget, short sell, outliers, cardinality, lot and transaction cost, liquidity), as well as some others which makes it more complex, dynamic and intractable. The SR function is considered to be the measuring tool for best portfolio selection and optimization. At present, the area of portfolio optimization lacks in having multiple constraints with the SR as the objective function. This research focuses on a two-stage portfolio selection, diversification, and optimization. The normality tests have been performed from the data considered and it is found that the data is nonlinear and stochastic. The two selection criterion (mean and variance) have been introduced in this research. Furthermore, several constraints have been considered for the problem of Multiple Constraints Portfolio Optimization (MCPO). A metaheuristic technique needs to be developed with the financial toolbox inMATLAB and the Particle SwarmOptimization (PSO) for portfolio construction, diversification, and optimization, namely, the Modified PSO (MPSO). The simulation on the benchmark model for restriction on the short sale was performed. Also, the diversification phenomenon for having the 10, 50 and 150 assets collection has been observed. The obtained results for the benchmark model are 42.51% and 84.20% increment in Maximum of Maximum Sharp Ratio (MMSR), whereas 39.88% and 84.30% increment in Average of Maximum Sharp Ratio (AMSR). The results of the models having mean of return selection criteria have increments of 2.58%, 21.10%, 16.41%, 11.67%, and 6.42%; whereas, models M3 and M4 for MMSR values have decrement of 3.52% in comparison with the model having the variance of return selection criteria. This research will be beneficial for those involved such as in mathematical finance modeling, asset portfolio optimization and financial model optimization using metaheuristic techniques.
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spelling uthm-1024212023-08-28T06:29:59Z http://eprints.utm.my/102421/ Modelling of multiple constraints portfolio optimization using modified particle swarm optimization Zaheer, Kashif QA Mathematics In finance, the portfolio is the set of investment in the assets. Meanwhile, its optimization leads towards the best selection and diversification of investments. Portfolio optimization involves the objectives (mean, variance or Sharp Ratio (SR)) and constraints (budget, short sell, outliers, cardinality, lot and transaction cost, liquidity), as well as some others which makes it more complex, dynamic and intractable. The SR function is considered to be the measuring tool for best portfolio selection and optimization. At present, the area of portfolio optimization lacks in having multiple constraints with the SR as the objective function. This research focuses on a two-stage portfolio selection, diversification, and optimization. The normality tests have been performed from the data considered and it is found that the data is nonlinear and stochastic. The two selection criterion (mean and variance) have been introduced in this research. Furthermore, several constraints have been considered for the problem of Multiple Constraints Portfolio Optimization (MCPO). A metaheuristic technique needs to be developed with the financial toolbox inMATLAB and the Particle SwarmOptimization (PSO) for portfolio construction, diversification, and optimization, namely, the Modified PSO (MPSO). The simulation on the benchmark model for restriction on the short sale was performed. Also, the diversification phenomenon for having the 10, 50 and 150 assets collection has been observed. The obtained results for the benchmark model are 42.51% and 84.20% increment in Maximum of Maximum Sharp Ratio (MMSR), whereas 39.88% and 84.30% increment in Average of Maximum Sharp Ratio (AMSR). The results of the models having mean of return selection criteria have increments of 2.58%, 21.10%, 16.41%, 11.67%, and 6.42%; whereas, models M3 and M4 for MMSR values have decrement of 3.52% in comparison with the model having the variance of return selection criteria. This research will be beneficial for those involved such as in mathematical finance modeling, asset portfolio optimization and financial model optimization using metaheuristic techniques. 2020 Thesis NonPeerReviewed application/pdf en http://eprints.utm.my/102421/1/KashifZaheerPFS2021.pdf.pdf Zaheer, Kashif (2020) Modelling of multiple constraints portfolio optimization using modified particle swarm optimization. PhD thesis, Universiti Teknologi Malaysia. http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:146035
spellingShingle QA Mathematics
Zaheer, Kashif
Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title_full Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title_fullStr Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title_full_unstemmed Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title_short Modelling of multiple constraints portfolio optimization using modified particle swarm optimization
title_sort modelling of multiple constraints portfolio optimization using modified particle swarm optimization
topic QA Mathematics
url http://eprints.utm.my/102421/1/KashifZaheerPFS2021.pdf.pdf
url-record http://eprints.utm.my/102421/
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work_keys_str_mv AT zaheerkashif modellingofmultipleconstraintsportfoliooptimizationusingmodifiedparticleswarmoptimization