Application of deep reinforcement learning in asset liability management

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dc.contributor.author Wekwete, Takura Asael
dc.contributor.author Kufakunesu, Rodwell
dc.contributor.author Van Zyl, A.J. (Gusti)
dc.date.accessioned 2024-05-21T04:34:41Z
dc.date.available 2024-05-21T04:34:41Z
dc.date.issued 2023-11
dc.description DATA AVAILABILITY : Data will be made available on request. en_US
dc.description.abstract Asset Liability Management (ALM) is an essential risk management technique in Quantitative Finance and Actuarial Science. It aims to maximise a risk-taker’s ability to fulfil future liabilities. ALM is especially critical in environments of elevated interest rate changes, as has been experienced globally between 2021 and 2023. Traditional ALM implementation is still heavily dependent on the judgement of professionals such as Quants, Actuaries or Investment Managers. This over-reliance on human input critically limits ALM performance due to restricted automation, human irrationality and restricted scope for multi-objective optimisation. This paper addressed these limitations by applying Deep Reinforcement Learning (DRL), which optimises through trial, and error and continuous feedback from the environment. We defined the Reinforcement Learning (RL) components for the ALM application: the RL decision-making Agent, Environment, Actions, States and Reward Functions. The results demonstrated that DRL ALM can achieve duration-matching outcomes within 1% of the theoretical ALM at a 95% confidence level. Furthermore, compared to a benchmark weekly rebalancing traditional ALM regime, DRL ALM achieved superior outcomes of net portfolios which are, on average, 3 times less sensitive to interest rate changes. DRL also allows for increased automation, flexibility, and multi-objective optimisation in ALM, reducing the negative impact of human limitations and improving risk management outcomes. The findings and principles presented in this study apply to various institutional risk-takers, including insurers, banks, pension funds, and asset managers. Overall, DRL ALM provides a promising Artificial Intelligence (AI) avenue for improving risk management outcomes compared to the traditional approaches. en_US
dc.description.department Computer Science en_US
dc.description.department Mathematics and Applied Mathematics en_US
dc.description.sdg SDG-08:Decent work and economic growth en_US
dc.description.uri https://www.journals.elsevier.com/intelligent-systems-with-applications en_US
dc.identifier.citation Wekwete, T.A., Kufakunesu, R., and Van Zyl, G., 2023, 'Application of deep reinforcement learning in asset liability management', Intelligent Systems with Applications, vol. 20, art. 200286, pp. 1-17, doi: 10.1016/j.iswa.2023.200286. en_US
dc.identifier.issn 2667-3053 (online)
dc.identifier.other 10.1016/j.iswa.2023.200286
dc.identifier.uri http://hdl.handle.net/2263/96090
dc.language.iso en en_US
dc.publisher Elsevier en_US
dc.rights © 2023 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license. en_US
dc.subject Reinforcement learning en_US
dc.subject Deep learning en_US
dc.subject Duration matching en_US
dc.subject Redington immunisation en_US
dc.subject Deep hedging en_US
dc.subject Deep reinforcement learning (DRL) en_US
dc.subject Asset liability management (ALM) en_US
dc.title Application of deep reinforcement learning in asset liability management en_US
dc.type Article en_US


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