Dynamic portfolio rebalancing through reinforcement learning

Lim, Q. Y. E., Cao, Q. and Quek, C. (2022) Dynamic portfolio rebalancing through reinforcement learning. Neural Computing and Applications, 34(9), pp. 7125-7139. (doi: 10.1007/s00521-021-06853-3)

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Abstract

Portfolio managements in financial markets involve risk management strategies and opportunistic responses to individual trading behaviours. Optimal portfolios constructed aim to have a minimal risk with highest accompanying investment returns, regardless of market conditions. This paper focuses on providing an alternative view in maximising portfolio returns using Reinforcement Learning (RL) by considering dynamic risks appropriate to market conditions through dynamic portfolio rebalancing. The proposed algorithm is able to improve portfolio management by introducing the dynamic rebalancing of portfolios with vigorous risk through an RL agent. This is done while accounting for market conditions, asset diversifications, risk and returns in the global financial market. Studies have been performed in this paper to explore four types of methods with variations in fully portfolio rebalancing and gradual portfolio rebalancing, which combine with and without the use of the Long Short-Term Memory (LSTM) model to predict stock prices for adjusting the technical indicator centring. Performances of the four methods have been evaluated and compared using three constructed financial portfolios, including one portfolio with global market index assets with different risk levels, and two portfolios with uncorrelated stock assets from different sectors and risk levels. Observed from the experiment results, the proposed RL agent for gradual portfolio rebalancing with the LSTM model on price prediction outperforms the other three methods, as well as returns of individual assets in these three portfolios. The improvements of the returns using the RL agent for gradual rebalancing with prediction model are achieved at about 27.9–93.4% over those of the full rebalancing without prediction model. It has demonstrated the ability to dynamically adjust portfolio compositions according to the market trends, risks and returns of the global indices and stock assets.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Cao, Dr Qi
Authors: Lim, Q. Y. E., Cao, Q., and Quek, C.
College/School:College of Science and Engineering > School of Computing Science
Journal Name:Neural Computing and Applications
Publisher:Springer
ISSN:0941-0643
ISSN (Online):1433-3058
Published Online:27 December 2021
Copyright Holders:Copyright © 2021 The Authors
First Published:First published in Neural Computing and Applications 34(9): 7125-7139
Publisher Policy:Reproduced under a Creative Commons licence

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