Asymmetric Impact of Earnings News on Investor Uncertainty

Zihang Peng, D. Johnstone, Demetris Christodoulou
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引用次数: 13

Abstract

We describe a model that predicts an asymmetric impact of disclosure on investor uncertainty. We show that good news tends to resolve more uncertainty than bad news, and that uncertainty can be revised upwards if the investors' prior belief is sufficiently strong and the signal is sufficiently bad. This result is in contrast to classical disclosure models, where new information always resolves uncertainty and the change in uncertainty depends only on the relative precision of the news. Using option‐implied volatility as a proxy for uncertainty, we find strong support for our predictions. We also show that our results are robust to competing explanations, notably to the leverage effect and volatility feedback, as well as to the jump risk induced in anticipation of the earnings announcements.
盈利消息对投资者不确定性的不对称影响
我们描述了一个模型来预测披露对投资者不确定性的不对称影响。我们表明,好消息往往比坏消息解决更多的不确定性,如果投资者的先验信念足够强,信号足够坏,不确定性可以向上修正。这一结果与经典的披露模型形成对比,在经典的披露模型中,新信息总是能解决不确定性,而不确定性的变化仅取决于新闻的相对精确度。使用期权隐含波动率作为不确定性的代理,我们发现我们的预测得到了强有力的支持。我们还表明,我们的结果对相互竞争的解释是稳健的,特别是杠杆效应和波动性反馈,以及预期收益公告引起的跳跃风险。
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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