稳健投资组合管理:在均值-VaR框架下融合预测收益与残差数据的新型多任务学习模型

Robust portfolio management: A novel multi-task learning model fusing predicted returns and residual data under the framework of Mean-VaR

Journal of the Operational Research Society · 2024
被引 0
ABS 3

中文导读

提出一种多任务学习模型,将LSTM预测收益与异常检测残差结合,在均值-VaR框架下评估风险,基于中国市场数据验证,相比多个基准方法表现更优。

Abstract

We investigate how to build a robust portfolio by introducing a novel multi-task learning model that fuses predicted returns and residual data to assess the portfolio risk under the decision-making framework of Mean-VaR. A common way to build a portfolio is to predict the return of assets and then allocate weights according to the predicted return and corresponding risk. However, predicting asset returns accurately in financial markets remains a challenge. To improve prediction accuracy and, more importantly, effectively reduce risk in the portfolio, we adopt the multi-task learning anomaly detection (MTLAD). In this model, predicting asset returns using deep learning model (long short-term memory, LSTM) is the main task, and anomaly detection is the auxiliary task. We then combine the predicted returns and residual data to evaluate the risk measure when allocating the asset weights. Furthermore, we perform an extensive numerical investigation based on data in the Chinese financial market. Results obtained show that our robust portfolio management approach has great potential compared with multiple benchmarks.

投资组合管理机器学习金融风险管理资产配置