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Portfolio Value-at-Risk with Heavy-Tailed Risk Factors

Paul Glasserman
Columbia Business School

Philip Heidelberger
IBM Research Division

Perwez Shahabuddin
Columbia University - Department of Industrial Engineering and Operations Research (IEOR)



Mathematical Finance, Vol. 12, pp. 239-269, 2002

Abstract:     
This paper develops efficient methods for computing portfolio value-at-risk (VAR) when the underlying risk factors have a heavy-tailed distribution. In modeling heavy tails, we focus on multivariate t distributions and some extensions thereof. We develop two methods for VAR calculation that exploit a quadratic approximation to the portfolio loss, such as the delta-gamma approximation. In the first method, we derive the characteristic function of the quadratic approximation and then use numerical transform inversion to approximate the portfolio loss distribution. Because the quadratic approximation may not always yield accurate VAR estimates, we also develop a low variance Monte Carlo method. This method uses the quadratic approximation to guide the selection of an effective importance sampling distribution that samples risk factors so that large losses occur more often. Variance is further reduced by combining the importance sampling with stratified sampling. Numerical results on a variety of test portfolios indicate that large variance reductions are typically obtained. Both methods developed in this paper overcome difficulties associated with VAR calculation with heavy-tailed risk factors. The Monte Carlo method also extends to the problem of estimating the conditional excess, sometimes known as the conditional VAR.

Accepted Paper Series

Date posted: January 16, 2003 ; Last revised: February 27, 2004

Suggested Citation

Glasserman, Paul, Heidelberger, Philip and Shahabuddin, Perwez, Portfolio Value-at-Risk with Heavy-Tailed Risk Factors. Mathematical Finance, Vol. 12, pp. 239-269, 2002. Available at SSRN: http://ssrn.com/abstract=316207


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Contact Information

Paul Glasserman (Contact Author)
Columbia Business School ( email )
3022 Broadway
403 Uris Hall
New York, NY 10027
United States
212-854-4102 (Phone)
212-316-9180 (Fax)
Philip Heidelberger
IBM Research Division ( email )
Route 134
Kitchawan Road
Yorktown Heights, NY 10598
United States
Perwez Shahabuddin
Columbia University - Department of Industrial Engineering and Operations Research (IEOR) ( email )
331 S.W. Mudd Building
500 West 120th Street
New York, NY 10027
United States
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