Abstract
We propose a novel measure of the market return tail risk premium based on minimum- distance state price densities recovered from high-frequency data. The tail risk premium extracted from intra-day S&P 500 returns predicts the market equity and variance risk premiums and expected excess returns on a cross section of characteristics-sorted portfolios. Additionally, we describe the differential role of the quantity of tail risk, and of the tail premium, in shaping the future distribution of index returns. Our results are robust to controlling for established measures of variance and tail risk, and of risk premiums, in the predictive models.
Reference
Caio Almeida, Kim Ardison, Gustavo Freire, René Garcia, and Piotr Orlowski, “High-Frequency Tail Risk Premium and Stock Return Predictability”, Journal of Financial and Quantitative Analysis, vol. 59, n. 8, December 2024, pp. 3633–3670.
See also
Published in
Journal of Financial and Quantitative Analysis, vol. 59, n. 8, December 2024, pp. 3633–3670