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Novel Deep Reinforcement Algorithm With Adaptive Sampling Strategy for Continuous Portfolio Optimization

机译:具有连续投资组合优化的自适应采样策略的新型深度增强算法

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摘要

Quantitative trading targets favorable returns by determining patterns in historical data through statistical or mathematical approaches. With advances in artificial intelligence, many studies have indicated that deep reinforcement learning (RL) can perform well in quantitative trading by predicting price change trends in the financial market. However, most of the related frameworks display poor generalizability in the testing stage. Thus, we incorporated adversarial learning and a novel sampling strategy for RL portfolio management. The goal was to construct a portfolio comprising five assets from the constituents of the Dow Jones Industrial Average and to achieve excellent performance through our trading strategy. We used adversarial learning during the RL process to enhance the model’s robustness. Moreover, to improve the model’s computational efficiency, we introduced a novel sampling strategy to determine which data are worth learning by observing the learning condition. The experimental results revealed that the model with our sampling strategy had more favorable performance than the random learning strategy. The Sharpe ratio increased by 6 %–7 %, and profit increased by nearly 45 %. Thus, our proposed learning framework and the sampling strategy we employed are conducive to obtaining reliable trading rules.
机译:量化交易的目标通过统计学或数学方法确定的历史数据中的模式有利的回报。随着人工智能的发展,许多研究表明,深强化学习(RL)可以通过在金融市场预测价格变动趋势的定量交易表现良好。然而,大多数的相关框架的显示在测试阶段普遍性较差。因此,我们成立对抗性学习和RL组合管理一个新的抽样策略。我们的目标是构建包括来自道琼斯工业平均指数的成份5个资产组合,并实现通过我们的交易策略的优异性能。我们在RL过程中使用对抗性的学习,以提高模型的鲁棒性。此外,为了提高模型的计算效率,我们引入了一个新的采样策略来确定哪些数据值得学习通过观察学习条件。实验结果表明,我们的抽样策略模型具有比随机学习策略更有利的性能。夏普比率增加了6%-7%,和利润增加了近45%。因此,我们建议的学习框架,我们采用的抽样策略,有利于获得可靠的交易规则。

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