投资组合选择的双延迟深度确定性策略梯度算法

N. Baard, Terence L van Zyl
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引用次数: 1

摘要

关于投资组合选择问题,最先进的强化学习算法在某些市场条件下表现不佳。次优性能的原因可能是由于使用神经网络作为函数逼近器的演员批评方法中的高估偏差。由此产生的偏差会导致代理学习到次优策略,从而影响性能。本研究的重点是使用双延迟深度确定性策略梯度(TD3)算法进行投资组合选择,以获得比以前更好的结果。此外,需要分析算法在各种市场条件下的总体有效性,以确定TD3的鲁棒性。本研究建立了投资组合选择的强化学习环境,并在五种不同的市场条件下与三种最先进的算法一起训练TD3。通过允许代理人在特定时期管理每个市场的投资组合来测试算法。所得结果用于算法分析。研究表明,与其他最先进的算法相比,TD3算法在投资组合选择方面取得了更好的结果。此外,TD3在五个选定市场中的表现证明了该算法在投资组合选择问题中的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Twin-Delayed Deep Deterministic Policy Gradient Algorithm for Portfolio Selection
State-of-the-art RL algorithms have shown suboptimal performance in some market conditions with regard to the portfolio selection problem. The reason for suboptimal performance could be due to overestimation bias in actor-critic methods through the use of neural networks as the function approximator. The resulting bias leads to a suboptimal policy being learned by the agent, hindering performance. This research focuses on using the Twin-Delayed Deep Deterministic Policy Gradient (TD3) algorithm for portfolio selection to achieve greater results than previously achieved. In addition, an analysis of the overall effectiveness of the algorithm in various market conditions is needed to determine the TD3’s robustness. This research establishes a RL environment for portfolio selection and trains the TD3 alongside three state-of-the-art algorithms in five different market conditions. The algorithms are tested by allowing the agent to manage a portfolio in each market for a specified period. The results are used for the analysis of the algorithms. The research shows improved results achieved by the TD3 algorithm for portfolio selection compared to other state-of-the-art algorithms. Furthermore, the performance of the TD3 across the five selected markets proves the robustness of the algorithm in its use for the portfolio selection problem.
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