尾部风险的学习:市场风险管理中的机器学习与正则化的结合

IF 6.7 2区 管理学 Q1 MANAGEMENT
Shuai Wang , Qian Wang , Helen Lu , Dongxue Zhang , Qianyi Xing , Jianzhou Wang
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引用次数: 0

摘要

高质量的风险管理是确保金融体系安全、高效、稳定运行的关键。目前的巴塞尔协议要求金融机构定期计算和披露风险价值(VaR)和预期缺口(ES)指标。然而,传统风险模型的不准确性和不稳定性降低了用户的信心。因此,我们提出了两种新的概率深度学习框架来估计VaR和ES。经过训练的第一个框架可以输出对尾部风险更敏感的预期,以映射VaR和ES度量。在第二个框架中,我们提出用样条分位数函数近似VaR和ES度量,并通过设计各种深度学习架构来估计参数。为了保证所提出的体系结构的有效性,我们推导了它们的训练损失和约束。此外,我们还解决了现有机器学习风险模型难以估计ES的问题。因此,将各种个体风险模型结合起来进行风险管理具有很大的潜力。因此,我们提出了一种基于正则化的组合框架,该框架可以自适应地选择和缩小单个风险模型。所开发的单个方法和组合方法在回测方面优于现有方法,有助于金融机构根据巴塞尔资本协议更有效地配置资本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning about tail risk: Machine learning and combination with regularization in market risk management
High-quality risk management is the key to ensuring the safe, efficient, and stable operation of the financial system. The current Basel Accord requires financial institutions to regularly calculate and disclose Value at Risk (VaR) and Expected Shortfall (ES) measures. However, the inaccuracy and instability of traditional risk models have reduced users' confidence. Therefore, we propose two new probabilistic deep learning frameworks for estimating VaR and ES. The trained first framework can output expectiles that are more sensitive to tail risks to map VaR and ES measures. In the second framework, we propose to approximate VaR and ES measures with spline quantile function and estimate the parameters by designing various deep learning architectures. To ensure the effectiveness of the proposed architectures, we derived the training loss and constraints for them. In addition, we solve the problem that existing machine learning risk models are difficult to estimate ES. In this way, combining various individual risk models has great potential for risk management. Therefore, we propose a regularization-based combination framework that adaptively selects and shrinks individual risk models. The developed individual methods and combinations outperform existing methods in backtesting, assisting financial institutions to allocate capital more effectively according to the Basel Capital Accord.
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来源期刊
Omega-international Journal of Management Science
Omega-international Journal of Management Science 管理科学-运筹学与管理科学
CiteScore
13.80
自引率
11.60%
发文量
130
审稿时长
56 days
期刊介绍: Omega reports on developments in management, including the latest research results and applications. Original contributions and review articles describe the state of the art in specific fields or functions of management, while there are shorter critical assessments of particular management techniques. Other features of the journal are the "Memoranda" section for short communications and "Feedback", a correspondence column. Omega is both stimulating reading and an important source for practising managers, specialists in management services, operational research workers and management scientists, management consultants, academics, students and research personnel throughout the world. The material published is of high quality and relevance, written in a manner which makes it accessible to all of this wide-ranging readership. Preference will be given to papers with implications to the practice of management. Submissions of purely theoretical papers are discouraged. The review of material for publication in the journal reflects this aim.
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