Why does Option Implied Volatility Forecast Realized Volatility? Evidence from News Events

Sipeng Chen, Gang Li
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Abstract

We examine the information content of stock option implied volatility. We measure arrival intensities and magnitudes of various types of news, and find that these news measures are all positively associated with contemporaneous stock return volatility and many of them can be predicted by implied volatility. About 28% of the predictive power of implied volatility on future realized volatility is due to its ability to predict these news measures, and most of the predictive power is from predicting arrival intensities of both scheduled and unscheduled news. The predictive power is higher for fundamental news than for non-fundamental news.
期权隐含波动率为何预测已实现波动率?来自新闻事件的证据
本文研究了股票期权隐含波动率的信息含量。我们测量了各类新闻的到达强度和大小,发现这些新闻度量都与同期股票收益波动率呈正相关,其中许多都可以通过隐含波动率来预测。隐含波动率对未来已实现波动率的预测能力约有28%是由于其对这些新闻度量的预测能力,而大部分预测能力来自对预定和非预定新闻到达强度的预测。基本面新闻的预测能力高于非基本面新闻。
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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