深度投资组合管理的对比学习与奖励平滑

Yun-Hsuan Lien, Yuan-kui Li, Yu-Shuen Wang
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引用次数: 0

摘要

在本研究中,我们使用强化学习(RL)模型来投资资产以获得回报。这些模型经过训练,可以与基于历史市场数据的模拟环境进行交互,并学习交易策略。然而,由于金融市场的不可预测性,使用基于每个时期回报的深度神经网络可能具有挑战性。因此,从训练数据中学到的策略在实际情况中进行测试时可能并不有效。为了解决这个问题,我们将对比学习和奖励平滑融入到我们的培训过程中。对比学习允许强化学习模型识别资产状态中的模式,这些模式可能表明未来的价格走势。另一方面,奖励平滑作为一种正则化技术,防止模型寻求即时但不确定的利润。我们将我们的方法与各种传统金融技术和其他深度强化学习方法进行了测试,发现它在美国股市和加密货币市场都是有效的。我们的源代码可从https://github.com/sophialien/FinTech-DPM获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contrastive Learning and Reward Smoothing for Deep Portfolio Management
In this study, we used reinforcement learning (RL) models to invest assets in order to earn returns. The models were trained to interact with a simulated environment based on historical market data and learn trading strategies. However, using deep neural networks based on the returns of each period can be challenging due to the unpredictability of financial markets. As a result, the policies learned from training data may not be effective when tested in real-world situations. To address this issue, we incorporated contrastive learning and reward smoothing into our training process. Contrastive learning allows the RL models to recognize patterns in asset states that may indicate future price movements. Reward smoothing, on the other hand, serves as a regularization technique to prevent the models from seeking immediate but uncertain profits. We tested our method against various traditional financial techniques and other deep RL methods, and found it to be effective in both the U.S. stock market and the cryptocurrency market. Our source code is available at https://github.com/sophialien/FinTech-DPM.
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