Applied mathematics and machine learning for optimal portfolio allocation
This research explores asset allocation techniques, leveraging mathematical methods to optimise and analyse equity portfolios for the Singapore Exchange (SGX). From 2003 to the first quarter of 2024, the study implements and compares four allocation models alongside Fama-French three-factor and f...
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Format: | Final Year Project |
Language: | English |
Published: |
Nanyang Technological University
2024
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Online Access: | https://hdl.handle.net/10356/176941 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | This research explores asset allocation techniques, leveraging mathematical
methods to optimise and analyse equity portfolios for the Singapore Exchange
(SGX). From 2003 to the first quarter of 2024, the study implements and compares
four allocation models alongside Fama-French three-factor and five-factor models,
integrating machine learning methods such as principal component regression and
hierarchical agglomerative clustering to enhance the precision of factor models and
risk parity strategies. Through backtesting, the three-year lookback period was
deemed optimal for SGX, with analysis revealing the benefits of three and five-factor
models in specific contexts. The analysis also revealed the most optimal
performances with the Risk Parity and its three-factor variant when optimised for the
dispersion risk measure of Mean Absolute Deviation and the downside risk measure
of Semi-Standard Deviation. The findings are presented on an interactive application,
offering insights into equity portfolio management strategies using value-at-risk
metrics and scenario analysis to evaluate portfolio performance under various market
conditions. |
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