强化学习
文件夹
计算机科学
投资组合优化
资产配置
公制(单位)
性能指标
资产(计算机安全)
数学优化
项目组合管理
最优化问题
预算约束
运筹学
计量经济学
人工智能
经济
微观经济学
财务
数学
运营管理
管理
项目管理
计算机安全
算法
出处
期刊:The journal of financial data science
[Pageant Media US]
日期:2023-09-15
卷期号:5 (4): 86-99
被引量:2
标识
DOI:10.3905/jfds.2023.1.137
摘要
Risk budgeting (RB) portfolio optimization is one of the popular methods in asset allocation. The key benefit of this method is to control the risk contribution of each asset individually and reduce the unnecessary fluctuation in the allocation by not relying on the expected return of assets. The RB portfolio optimization requires one important parameter, a risk budget vector, and the portfolio performance is strongly influenced by the delicate choice of the values in this vector. Moreover, if the risk strategy allows deviation from a predefined risk budget, then it introduces the problem of finding the optimal time-dependent risk budget deviations. In this article, the author presents a reinforcement learning framework that can select this critical parameter optimally by learning how to control time-dynamic risk budgets in an automated and efficient manner. The experiment result shows that our agent can improve the target performance metric with statistical significance in the different asset universes, indicating that our agent can pick close to optimal risk budget deviations based on the learned policy.
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