风险价值编码:金融风险管理的预测机器

H. Arian, M. Moghimi, Ehsan Tabatabaei, S. Zamani
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引用次数: 5

摘要

风险度量是现代金融风险管理的核心。随着世界经济变得越来越复杂,标准的建模假设被打破,先进的人工智能解决方案可能为分析全球市场提供正确的工具。在本文中,我们提供了一种新的测量市场风险的方法,称为编码风险价值(Encoded VaR),它基于一种称为变分自编码器(VAEs)的人工神经网络。编码VaR是一种生成模型,可用于从一系列历史横截面股票收益中再现市场情景,同时增加财务数据中存在的信噪比,并在不假设股票收益联合分布的情况下学习市场的依赖结构。我们将编码VaR的样本外结果与其他11种方法进行了比较,并表明它与文献中提出的许多其他知名VaR算法具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Encoded Value-at-Risk: A Predictive Machine for Financial Risk Management
Measuring risk is at the center of modern financial risk management. As the world economy is becoming more complex and standard modeling assumptions are violated, the advanced artificial intelligence solutions may provide the right tools to analyze the global market. In this paper, we provide a novel approach for measuring market risk called Encoded Value-at-Risk (Encoded VaR), which is based on a type of artificial neural network, called Variational Auto-encoders (VAEs). Encoded VaR is a generative model which can be used to reproduce market scenarios from a range of historical cross-sectional stock returns, while increasing the signal-to-noise ratio present in the financial data, and learning the dependency structure of the market without any assumptions about the joint distribution of stock returns. We compare Encoded VaR out-of-sample results with eleven other methods and show that it is competitive to many other well-known VaR algorithms presented in the literature.
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