Developing An Attention-Based Ensemble Learning Framework for Financial Portfolio Optimisation

Zhenglong Li, Vincent Tam
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Abstract

In recent years, deep or reinforcement learning approaches have been applied to optimise investment portfolios through learning the spatial and temporal information under the dynamic financial market. Yet in most cases, the existing approaches may produce biased trading signals based on the conventional price data due to a lot of market noises, which possibly fails to balance the investment returns and risks. Accordingly, a multi-agent and self-adaptive portfolio optimisation framework integrated with attention mechanisms and time series, namely the MASAAT, is proposed in this work in which multiple trading agents are created to observe and analyse the price series and directional change data that recognises the significant changes of asset prices at different levels of granularity for enhancing the signal-to-noise ratio of price series. Afterwards, by reconstructing the tokens of financial data in a sequence, the attention-based cross-sectional analysis module and temporal analysis module of each agent can effectively capture the correlations between assets and the dependencies between time points. Besides, a portfolio generator is integrated into the proposed framework to fuse the spatial-temporal information and then summarise the portfolios suggested by all trading agents to produce a newly ensemble portfolio for reducing biased trading actions and balancing the overall returns and risks. The experimental results clearly demonstrate that the MASAAT framework achieves impressive enhancement when compared with many well-known portfolio optimsation approaches on three challenging data sets of DJIA, S&P 500 and CSI 300. More importantly, our proposal has potential strengths in many possible applications for future study.
为金融投资组合优化开发基于注意力的集合学习框架
近年来,深度学习或强化学习方法已被应用于通过学习动态金融市场下的空间和时间信息来优化投资组合。然而,在大多数情况下,由于存在大量市场噪声,现有方法可能会根据传统的定价数据产生有偏差的交易信号,从而可能无法平衡投资收益和风险。因此,本研究提出了一种集成了注意力机制和时间序列的多代理自适应投资组合优化框架,即 MASAAT,其中创建了多个交易代理来观察和分析价格序列和方向变化数据,以识别不同粒度的资产价格的显著变化,从而提高价格序列的信噪比。之后,每个代理的注意力横截面分析模块和时间分析模块通过依次重构金融数据令牌,可以有效捕捉资产之间的相关性和时间点之间的依赖性。此外,该框架还集成了一个投资组合生成器,用于融合时空信息,然后汇总所有交易代理建议的投资组合,生成一个新的集合投资组合,以减少有偏差的交易行为,平衡整体收益和风险。实验结果清楚地表明,在道琼斯工业平均指数、标准普尔 500 指数和沪深 300 指数这三个具有挑战性的数据集上,与许多著名的投资组合优化方法相比,MASAAT 框架取得了令人印象深刻的提升。更重要的是,我们的建议在未来研究的许多可能应用中具有潜在优势。
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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