Option-Implied Network Measures of Tail Contagion and Stock Return Predictability

Manuela Pedio
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引用次数: 1

Abstract

The Great Financial Crisis of 2008 – 2009 has raised the attention of policy-makers and researchers about the interconnectedness among the volatility of the returns of financial assets as a potential source of risk that extends beyond the usual changes in correlations and include transmission channels that operate through the higher order co-moments of returns. In this paper, we investigate whether a newly developed, forward-looking measure of volatility spillover risk based on option implied volatilities shows any predictive power for stock returns. We also compare the predictive performance of this measure with that of the volatility spillover index proposed by Diebold and Yilmaz (2008, 2012), which is based on realized, backward-looking volatilities instead. While both measures show evidence of in-sample predictive power, only the option-implied measure is able to produce out-of-sample forecasts that outperform a simple historical mean benchmark.
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尾部传染与股票收益可预测性的期权隐含网络测度
2008 - 2009年的金融大危机引起了政策制定者和研究人员的注意,即金融资产收益波动之间的相互联系是一种潜在的风险来源,它超出了通常的相关性变化,并包括通过高阶收益共矩运行的传递渠道。在本文中,我们研究了一种基于期权隐含波动率的新开发的前瞻性波动溢出风险度量是否对股票收益具有预测能力。我们还将该指标的预测性能与Diebold和Yilmaz(2008,2012)提出的波动溢出指数的预测性能进行了比较,后者基于已实现的、向后看的波动率。虽然这两种方法都显示出样本内预测能力的证据,但只有期权隐含方法能够产生优于简单历史平均基准的样本外预测。
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