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

IF 1.1 Q3 BUSINESS, FINANCE
Volodymyr Novykov, Christopher Bilson, A. Gepp, Geoff Harris, B. Vanstone
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引用次数: 0

Abstract

PurposeMachine 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/approachThis 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.FindingsThe 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/valueSeveral 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.
深度学习在投资组合管理中的应用:系统文献综述
目的机器学习(ML),尤其是深度学习,在现实生活中的各种应用中日益受到重视。投资组合管理也不例外。本文对深度学习在投资组合管理中的应用进行了系统的文献综述。这些研究结果可能对行业从业者和研究人员都很有价值,有助于他们尝试新颖的投资组合管理方法,促进投资管理实践。(2016) 以及 Fisch 和 Block (2018)的指导和方法,首先根据适当开发的搜索短语识别相关文献,过滤由此产生的出版物集,并提出对研究本身及其元数据的描述性和分析性结论。研究结果作者发现,鉴于强化学习算法的实时投资组合管理能力,应用于该领域的强化学习算法占据了强大的主导地位。其他著名的深度学习模型,如卷积神经网络(CNN)和递归神经网络(RNN)及其衍生物,也已证明非常适合时间序列预测。最近,该领域发表的论文数量不断增加,这可能是受计算技术进步、硬件可及性和数据可用性的推动。这篇综述展示了几种有前景的应用,并指出了未来的研究机会,包括更好地平衡风险回报谱、降低数据维度和预处理输入的新方法、更加关注直接权重生成、新颖的深度学习架构和一致的数据选择。然而,据作者所知,这是第一篇关注深度学习架构及其在投资组合管理问题中应用的综述。该综述还提出了一种新颖的通用模型分类法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.50
自引率
0.00%
发文量
6
期刊介绍: The objective of the Journal is to publish papers that make a fundamental and substantial contribution to the understanding of accounting phenomena. To this end, the Journal intends to publish papers that (1) synthesize an area of research in a concise and rigorous manner to assist academics and others to gain knowledge and appreciation of diverse research areas or (2) present high quality, multi-method, original research on a broad range of topics relevant to accounting, auditing and taxation. Topical coverage is broad and inclusive covering virtually all aspects of accounting. Consistent with the historical mission of the Journal, it is expected that the lead article of each issue will be a synthesis article on an important research topic. Other manuscripts to be included in a given issue will be a mix of synthesis and original research papers. In addition to traditional research topics and methods, we actively solicit manuscripts of the including, but not limited to, the following: • meta-analyses • field studies • critiques of papers published in other journals • emerging developments in accounting theory • commentaries on current issues • innovative experimental research with strong grounding in cognitive, social or anthropological sciences • creative archival analyses using non-standard methodologies or data sources with strong grounding in various social sciences • book reviews • "idea" papers that don''t fit into other established categories.
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