DeepVaR: a framework for portfolio risk assessment leveraging probabilistic deep neural networks.

Georgios Fatouros, Georgios Makridis, Dimitrios Kotios, John Soldatos, Michael Filippakis, Dimosthenis Kyriazis
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引用次数: 6

Abstract

Determining and minimizing risk exposure pose one of the biggest challenges in the financial industry as an environment with multiple factors that affect (non-)identified risks and the corresponding decisions. Various estimation metrics are utilized towards robust and efficient risk management frameworks, with the most prevalent among them being the Value at Risk (VaR). VaR is a valuable risk-assessment approach, which offers traders, investors, and financial institutions information regarding risk estimations and potential investment insights. VaR has been adopted by the financial industry for decades, but the generated predictions lack efficiency in times of economic turmoil such as the 2008 global financial crisis and the COVID-19 pandemic, which in turn affects the respective decisions. To address this challenge, a variety of well-established variations of VaR models are exploited by the financial community, including data-driven and data analytics models. In this context, this paper introduces a probabilistic deep learning approach, leveraging time-series forecasting techniques with high potential of monitoring the risk of a given portfolio in a quite efficient way. The proposed approach has been evaluated and compared to the most prominent methods of VaR calculation, yielding promising results for VaR 99% for forex-based portfolios.

Supplementary information: The online version contains supplementary material available at 10.1007/s42521-022-00050-0.

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DeepVaR:一个利用概率深度神经网络进行投资组合风险评估的框架。
确定和最小化风险暴露是金融行业面临的最大挑战之一,因为金融行业的环境中有多种因素影响(未)确定的风险和相应的决策。各种评估度量被用于健壮和有效的风险管理框架,其中最流行的是风险价值(VaR)。VaR是一种有价值的风险评估方法,它为交易者、投资者和金融机构提供有关风险估计和潜在投资见解的信息。金融行业几十年来一直采用VaR,但在2008年全球金融危机和新冠肺炎疫情等经济动荡时期,生成的预测缺乏效率,从而影响了各自的决策。为了应对这一挑战,金融界利用了各种成熟的VaR模型变体,包括数据驱动模型和数据分析模型。在此背景下,本文介绍了一种概率深度学习方法,利用时间序列预测技术,以一种相当有效的方式监测给定投资组合的风险。所提出的方法已被评估并与最著名的VaR计算方法进行了比较,对于基于外汇的投资组合,VaR为99%,结果很有希望。补充信息:在线版本包含补充资料,提供地址:10.1007/s42521-022-00050-0。
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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