Investment portfolio selection using genetic algorithms
The challenge of portfolio selection remains a critical focus within the domains of genetic algorithms and computational finance optimization. In the volatile financial markets, the objective of optimizing genetic algorithms (GAs) is to enhance the efficiency of portfolio decision-making processe...
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Format: | Thesis-Master by Coursework |
Language: | English |
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Nanyang Technological University
2024
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Online Access: | https://hdl.handle.net/10356/176229 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | The challenge of portfolio selection remains a critical focus within the domains
of genetic algorithms and computational finance optimization. In the volatile
financial markets, the objective of optimizing genetic algorithms (GAs) is to
enhance the efficiency of portfolio decision-making processes and identify portfolios
with superior risk-adjustment capabilities. This dissertation explores the
application of an enhanced genetic algorithm, grounded in a multifactor quantitative
model, for strategic portfolio decision-making to sift through multifaceted
data and pinpoint stock portfolios that yield high returns and exhibit robust risk
resistance. Initially,this dissertation constructs an individual fitness function calculation
model incorporating multiple technical indicators based on the concept
of multifactor quantification. Then, introduces industry diversification into the
optimization process to prevent the algorithm from overly concentrating on local
optima, thereby increasing the likelihood and efficiency of identifying global optima.
Furthermore, it refines the genetic algorithm to overcome traditional methods’
drawbacks of high computational costs and premature convergence. Rigorous
back-testing validates the effectiveness of this method, with comparative
experiments between GA-utilized and non-GA-utilized models underscoring the
superiority of the proposed approach, particularly during market downturns. The
results affirm that GA-optimized portfolios achieve higher risk-adjusted returns
and minimize drawdowns amidst market volatility. These insights highlight the
potential of the optimized GA as a powerful tool for navigating complex market
dynamics, offering investors a strategic advantage. |
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