Deep Learning for Systemic Risk Measures

Yichen Feng, Ming Min, J. Fouque
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引用次数: 2

Abstract

The aim of this paper is to study a new methodological framework for systemic risk measures by applying deep learning method as a tool to compute the optimal strategy of capital allocations. Under this new framework, systemic risk measures can be interpreted as the minimal amount of cash that secures the aggregated system by allocating capital to the single institutions before aggregating the individual risks. This problem has no explicit solution except in very limited situations. Deep learning is increasingly receiving attention in financial modelings and risk management and we propose our deep learning based algorithms to solve both the primal and dual problems of the risk measures, and thus to learn the fair risk allocations. In particular, our method for the dual problem involves the training philosophy inspired by the well-known Generative Adversarial Networks (GAN) approach and a newly designed direct estimation of Radon-Nikodym derivative. We close the paper with substantial numerical studies of the subject and provide interpretations of the risk allocations associated to the systemic risk measures. In the particular case of exponential preferences, numerical experiments demonstrate excellent performance of the proposed algorithm, when compared with the optimal explicit solution as a benchmark.
系统性风险度量的深度学习
本文的目的是通过应用深度学习方法作为计算资本配置最优策略的工具,研究一个新的系统性风险度量方法框架。在这个新框架下,系统风险措施可以被解释为在汇总单个风险之前,通过向单个机构分配资本来确保总体系统安全的最小现金量。除了在非常有限的情况下,这个问题没有明确的解决办法。深度学习在金融建模和风险管理中受到越来越多的关注,我们提出了基于深度学习的算法来解决风险度量的原初问题和对偶问题,从而学习公平的风险分配。特别地,我们的对偶问题方法涉及到受著名的生成对抗网络(GAN)方法启发的训练哲学和新设计的Radon-Nikodym导数的直接估计。在论文的最后,我们对该主题进行了大量的数值研究,并对与系统性风险措施相关的风险分配进行了解释。在指数偏好的特殊情况下,数值实验证明了该算法的优异性能,并与最优显式解作为基准进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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