MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION
Abstract Portfolio optimization is a common challenge in modern finance, especially considering complex and dynamic market uncertainties. In this study, we develop a novel approach to optimize portfolios over multiple periods using a multistage strategy integrated with Particle Swarm Optimization...
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id-itb.:842202024-08-14T13:49:25ZMULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION Arkaputra Azis, Rheznandya Indonesia Theses Multi-period portfolio optimization, multi-stage strategy, Particle Swarm Optimization, bounded control, no-bankruptcy INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84220 Abstract Portfolio optimization is a common challenge in modern finance, especially considering complex and dynamic market uncertainties. In this study, we develop a novel approach to optimize portfolios over multiple periods using a multistage strategy integrated with Particle Swarm Optimization (PSO) algorithm. This multi-stage strategy views portfolios over multiple periods as a long-term process with different investment phases that reallocate assets depending on expected market conditions. This study discusses two common constraints in investment practices: bounded control, which limits asset allocation, and no-bankruptcy, which ensures portfolio sustainability without risk of bankruptcy. These constraints increase the complexity of multi-period portfolio optimization models, which can be addressed using PSO. PSO was chosen due to its ability to handle nonlinear and multidimensional optimization problems, as well as its flexibility to find optimal solutions in complex search spaces. Research shows that PSO effectively optimizes multi-period portfolios with multi-stage strategies, allowing for the management of large asset portfolios, long time horizons, and dynamic investment return schemes. Furthermore, the study sheds light on how constraints can affect investors’ return expectations, providing valuable insights for financial practitioners and academics. Thus, the use of PSO in this context not only efficiently optimizes asset allocation, but also provides a solution that addresses the complexities of multi-period portfolio optimization while taking into account relevant constraints in daily financial practice. text |
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Abstract Portfolio optimization is a common challenge in modern finance,
especially considering complex and dynamic market uncertainties. In this study, we
develop a novel approach to optimize portfolios over multiple periods using a multistage
strategy integrated with Particle Swarm Optimization (PSO) algorithm. This
multi-stage strategy views portfolios over multiple periods as a long-term process
with different investment phases that reallocate assets depending on expected
market conditions. This study discusses two common constraints in investment
practices: bounded control, which limits asset allocation, and no-bankruptcy, which
ensures portfolio sustainability without risk of bankruptcy. These constraints
increase the complexity of multi-period portfolio optimization models, which can
be addressed using PSO. PSO was chosen due to its ability to handle nonlinear
and multidimensional optimization problems, as well as its flexibility to find
optimal solutions in complex search spaces. Research shows that PSO effectively
optimizes multi-period portfolios with multi-stage strategies, allowing for the
management of large asset portfolios, long time horizons, and dynamic investment
return schemes. Furthermore, the study sheds light on how constraints can affect
investors’ return expectations, providing valuable insights for financial practitioners
and academics. Thus, the use of PSO in this context not only efficiently optimizes
asset allocation, but also provides a solution that addresses the complexities of
multi-period portfolio optimization while taking into account relevant constraints
in daily financial practice. |
format |
Theses |
author |
Arkaputra Azis, Rheznandya |
spellingShingle |
Arkaputra Azis, Rheznandya MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
author_facet |
Arkaputra Azis, Rheznandya |
author_sort |
Arkaputra Azis, Rheznandya |
title |
MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
title_short |
MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
title_full |
MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
title_fullStr |
MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
title_full_unstemmed |
MULTIPERIOD PORTFOLIO OPTIMIZATION WITH MULTISTAGE STRATEGY UTILIZING PARTICLE SWARM OPTIMIZATION |
title_sort |
multiperiod portfolio optimization with multistage strategy utilizing particle swarm optimization |
url |
https://digilib.itb.ac.id/gdl/view/84220 |
_version_ |
1822010307732570112 |