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Article
How asymmetric is U.S. stock market volatility?
USF St. Petersburg campus Faculty Publications
  • Louis H. Ederington
  • Wei Guan
SelectedWorks Author Profiles:

Wei Guan

Document Type
Article
Publication Date
2010
Disciplines
Abstract

This paper explores differences in the impact of equally large positive and negative surprise return shocks in the aggregate U.S. stock market on: (1) the volatility predictions of asymmetric time-series models, (2) implied volatility, and (3) realized volatility. Following large negative surprise return shocks, both asymmetric time-series models (such as the EGARCH and GJR models) and implied volatility predict an increase in volatility and, consistent with this, ex post realized volatility normally rises as predicted. Following large positive return shocks, asymmetric time-series models predict an increase in volatility (albeit a much smaller increase than following a negative shock of the same magnitude), but both implied and realized volatilities generally fall sharply. While asymmetric time-series models predict a decline in volatility following near-zero returns, both implied and realized volatility are normally little changed from levels observed prior to the stable market. The reasons for the differences are explored.

Comments
Abstract only. Full-text article is available through licensed access provided by the publisher. Published in Journal of Financial Markets, 13(2), 225-248. DOI: 10.1016/j.finmar.2009.10.001. Members of the USF System may access the full-text of the article through the authenticated link provided.
Language
en_US
Publisher
Elsevier
Creative Commons License
Creative Commons Attribution-Noncommercial-No Derivative Works 4.0
Citation Information
Ederington, L.H. & Guan, W. (2010). How asymmetric is U.S. stock market volatility? Journal of Financial Markets, 13(2), 225-248.