Extreme Risk In Resource Indices And The Generalized Logistic Distribution

Authors

  • Chun-Kai Huang University of Cape Town & University of KwaZulu-Natal
  • Venelle Pather University of KwaZulu-Natal
  • Jahvaid Hammujuddy University of KwaZulu-Natal
  • Knowledge Chinhamu University of KwaZulu-Natal

Keywords:

Extreme Value, Generalized Logistic Distribution, Value-at-Risk, Expected Shortfall, Resource Indices

Abstract

The resource sector accounts for a substantial proportion of market capitalization on the US and South African stock exchanges. Hence, severe movements in related stock prices can drastically affect the risk profile of the entire market. Extreme value theory provides a basis for evaluating and forecasting such sporadic occurrences. In this article, we compare performances of classical extreme value models against the recently suggested generalized logistic distribution, for estimating value-at-risk and expected shortfall in resource indices. Our results suggest a significant difference in risk behavior between the two markets and the generalized logistic distribution does not always outperform classical models, as previous work may have suggested.

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Published

2017-03-01

How to Cite

Huang, C.-K., Pather, V., Hammujuddy, J., & Chinhamu, K. (2017). Extreme Risk In Resource Indices And The Generalized Logistic Distribution. Journal of Applied Business Research, 33(2). Retrieved from https://journals.klalliance.org/index.php/JABR/article/view/420

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Articles