偏斜
系统性风险
计量经济学
事前
经济
库存(枪支)
风险溢价
对比度(视觉)
金融经济学
计算机科学
地理
宏观经济学
人工智能
考古
标识
DOI:10.1016/j.jfineco.2019.06.002
摘要
We provide a new methodology to empirically investigate the respective roles of systematic and idiosyncratic skewness in explaining expected stock returns. Using a large number of predictors, we forecast the cross-sectional ranks of systematic and idiosyncratic skewness, which are easier to predict than their actual values. Compared to other measures of ex ante systematic skewness, our forecasts create a significant spread in ex post systematic skewness. A predicted systematic skewness risk factor carries a significant and robust risk premium that ranges from 6% to 12% per year. In contrast, the role of idiosyncratic skewness in pricing stocks is less robust.
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