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Deep learning applications in investment portfolio management: a systematic literature review

Volodymyr Novykov (Bond Business School, Bond University, Gold Coast, Australia)
Christopher Bilson (Bond Business School, Bond University, Gold Coast, Australia)
Adrian Gepp (Bond Business School, Bond University, Gold Coast, Australia) (Bangor Business School, Bangor University, Bangor, UK)
Geoff Harris (Bond Business School, Bond University, Gold Coast, Australia)
Bruce James Vanstone (Bond Business School, Bond University, Gold Coast, Australia) (Bangor Business School, Bangor University, Bangor, UK)

Journal of Accounting Literature

ISSN: 0737-4607

Article publication date: 18 December 2023

250

Abstract

Purpose

Machine learning (ML), and deep learning in particular, is gaining traction across a myriad of real-life applications. Portfolio management is no exception. This paper provides a systematic literature review of deep learning applications for portfolio management. The findings are likely to be valuable for industry practitioners and researchers alike, experimenting with novel portfolio management approaches and furthering investment management practice.

Design/methodology/approach

This review follows the guidance and methodology of Linnenluecke et al. (2020), Massaro et al. (2016) and Fisch and Block (2018) to first identify relevant literature based on an appropriately developed search phrase, filter the resultant set of publications and present descriptive and analytical findings of the research itself and its metadata.

Findings

The authors find a strong dominance of reinforcement learning algorithms applied to the field, given their through-time portfolio management capabilities. Other well-known deep learning models, such as convolutional neural network (CNN) and recurrent neural network (RNN) and its derivatives, have shown to be well-suited for time-series forecasting. Most recently, the number of papers published in the field has been increasing, potentially driven by computational advances, hardware accessibility and data availability. The review shows several promising applications and identifies future research opportunities, including better balance on the risk-reward spectrum, novel ways to reduce data dimensionality and pre-process the inputs, stronger focus on direct weights generation, novel deep learning architectures and consistent data choices.

Originality/value

Several systematic reviews have been conducted with a broader focus of ML applications in finance. However, to the best of the authors’ knowledge, this is the first review to focus on deep learning architectures and their applications in the investment portfolio management problem. The review also presents a novel universal taxonomy of models used.

Keywords

Acknowledgements

Guidance: The authors would like to thankfully acknowledge thoughtful guidance kindly provided by Prof. Tom Smith. The authors also thank seminar participants and doctoral discussants at the AFAANZ PhD Symposium 2023 (Gold Coast, Australia) with Henk Berkman and Angel Zhong as faculty discussants for insightful feedback and suggestions, as well as conference participants at the UBS Future of Investment Management Conference held in Sydney, June 2023.

Citation

Novykov, V., Bilson, C., Gepp, A., Harris, G. and Vanstone, B.J. (2023), "Deep learning applications in investment portfolio management: a systematic literature review", Journal of Accounting Literature, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/JAL-07-2023-0119

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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