强化学习
风险-回报谱
计算机科学
宏
文件夹
嵌入
水位下降(水文)
计量经济学
风险管理
经风险调整的资本回报率
投资业绩
投资回报率
经济
人工智能
金融经济学
微观经济学
财务
工程类
地下水
含水层
资本形成
利润(经济学)
岩土工程
程序设计语言
金融资本
生产(经济)
作者
Zhicheng Wang,Biwei Huang,Shikui Tu,Kun Zhang,Lei Xu
出处
期刊:Proceedings of the ... AAAI Conference on Artificial Intelligence
[Association for the Advancement of Artificial Intelligence (AAAI)]
日期:2021-05-18
卷期号:35 (1): 643-650
被引量:26
标识
DOI:10.1609/aaai.v35i1.16144
摘要
Most existing reinforcement learning (RL)-based portfolio management models do not take into account the market conditions, which limits their performance in risk-return balancing. In this paper, we propose DeepTrader, a deep RL method to optimize the investment policy. In particular, to tackle the risk-return balancing problem, our model embeds macro market conditions as an indicator to dynamically adjust the proportion between long and short funds, to lower the risk of market fluctuations, with the negative maximum drawdown as the reward function. Additionally, the model involves a unit to evaluate individual assets, which learns dynamic patterns from historical data with the price rising rate as the reward function. Both temporal and spatial dependencies between assets are captured hierarchically by a specific type of graph structure. Particularly, we find that the estimated causal structure best captures the interrelationships between assets, compared to industry classification and correlation. The two units are complementary and integrated to generate a suitable portfolio which fits the market trend well and strikes a balance between return and risk effectively. Experiments on three well-known stock indexes demonstrate the superiority of DeepTrader in terms of risk-gain criteria.
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