非对称金融市场中的条件极值

Conditional Extremes in Asymmetric Financial Markets

Journal of Business & Economic Statistics · 2018
被引 15
人大 AABS 4

中文导读

提出一种动态预测系统性风险指标CoVaR的半参数方法,结合极值理论和GARCH模型处理金融数据的非对称性和厚尾特征,并通过实证分析验证其效果。

Abstract

The global financial crisis of 2007–2009 revealed the great extent to which systemic risk can jeopardize the stability of the entire financial system. An effective methodology to quantify systemic risk is at the heart of the process of identifying the so-called systemically important financial institutions for regulatory purposes as well as to investigate key drivers of systemic contagion. The article proposes a method for dynamic forecasting of CoVaR, a popular measure of systemic risk. As a first step, we develop a semi-parametric framework using asymptotic results in the spirit of extreme value theory (EVT) to model the conditional probability distribution of a bivariate random vector given that one of the components takes on a large value, taking into account important features of financial data such as asymmetry and heavy tails. In the second step, we embed the proposed EVT method into a dynamic framework via a bivariate GARCH process. An empirical analysis is conducted to demonstrate and compare the performance of the proposed methodology relative to a very flexible fully parametric alternative.

CoVaR极端值理论非对称金融市场系统性风险