Multi-objective investment portfolio optimization
A well renowned problem in the world of finance is optimization of investment portfolios. An investor has a primary goal of maximising returns and minimizing risk at the same time for a portfolio. Constructing a well-diversified portfolio is not a straightforward task for investors or portfolio mana...
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sg-ntu-dr.10356-755132023-07-07T15:40:55Z Multi-objective investment portfolio optimization Ochani, Aditya Sanjay Ponnuthurai N. Suganthan School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering A well renowned problem in the world of finance is optimization of investment portfolios. An investor has a primary goal of maximising returns and minimizing risk at the same time for a portfolio. Constructing a well-diversified portfolio is not a straightforward task for investors or portfolio managers as optimization of two objectives simultaneously is tedious. A single-objective optimization as proposed by Henry Markowitz in his mean-variance theory for portfolio allocation does not meet expectations of a modern day investor. Moreover, the ability to use multi-objective functions not only cater to a wider range of possibilities but also provide a much higher accuracy for efficient asset allocation. Evolutionary algorithms using multiple objective functions prove to be much more efficient than traditional optimization techniques.This project focuses on the use of a few popular Multi-objective Evolutionary Algorithms to build well-diversified portfolios. Implementation on the S&P 500 dataset is carried out using four different algorithms and their Pareto fronts are compared. It includes the cardinality constraint and is also subject to further constraints that put a bound on the minimum allocation and add a feature of transaction costs. Furthermore, a few forecasting methods have been implemented in this research, these include Monte Carlo Simulation and NARX, to predict the future price of assets. Bachelor of Engineering 2018-06-01T03:26:04Z 2018-06-01T03:26:04Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75513 en Nanyang Technological University 72 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Ochani, Aditya Sanjay Multi-objective investment portfolio optimization |
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A well renowned problem in the world of finance is optimization of investment portfolios. An investor has a primary goal of maximising returns and minimizing risk at the same time for a portfolio. Constructing a well-diversified portfolio is not a straightforward task for investors or portfolio managers as optimization of two objectives simultaneously is tedious. A single-objective optimization as proposed by Henry Markowitz in his mean-variance theory for portfolio allocation does not meet expectations of a modern day investor. Moreover, the ability to use multi-objective functions not only cater to a wider range of possibilities but also provide a much higher accuracy for efficient asset allocation. Evolutionary algorithms using multiple objective functions prove to be much more efficient than traditional optimization techniques.This project focuses on the use of a few popular Multi-objective Evolutionary Algorithms to build well-diversified portfolios. Implementation on the S&P 500 dataset is carried out using four different algorithms and their Pareto fronts are compared. It includes the cardinality constraint and is also subject to further constraints that put a bound on the minimum allocation and add a feature of transaction costs. Furthermore, a few forecasting methods have been implemented in this research, these include Monte Carlo Simulation and NARX, to predict the future price of assets. |
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Ponnuthurai N. Suganthan |
author_facet |
Ponnuthurai N. Suganthan Ochani, Aditya Sanjay |
format |
Final Year Project |
author |
Ochani, Aditya Sanjay |
author_sort |
Ochani, Aditya Sanjay |
title |
Multi-objective investment portfolio optimization |
title_short |
Multi-objective investment portfolio optimization |
title_full |
Multi-objective investment portfolio optimization |
title_fullStr |
Multi-objective investment portfolio optimization |
title_full_unstemmed |
Multi-objective investment portfolio optimization |
title_sort |
multi-objective investment portfolio optimization |
publishDate |
2018 |
url |
http://hdl.handle.net/10356/75513 |
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1772828269107740672 |