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An Improved Approach to Computing Implied Volatility

Donald R. Chambers
Lafayette College - College of Economics and Business

Sanjay Nawalkha
University of Massachusetts at Amherst - Eugene M. Isenberg School of Management


February 2, 2009


Abstract:     
A well known problem in finance is the absence of a closed form solution for volatility in common option pricing models. Several approaches have been developed to provide closed form approximations to volatility. This paper examines Chance's (1993, 1996) model, Corrado and Miller's (1996) model and Bharadia, Christofides and Salkin's (1996) model for approximating implied volatility. We develop a simplified extension of Chance's model that has greater accuracy than previous models. Our tests indicate dramatically improved results.

Working Paper Series

Date posted: February 02, 2009 ; Last revised: February 02, 2009

Suggested Citation

Chambers, Donald R. and Nawalkha, Sanjay, An Improved Approach to Computing Implied Volatility (February 2, 2009). Available at SSRN: http://ssrn.com/abstract=1336730


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Contact Information

Donald R. Chambers (Contact Author)
Lafayette College - College of Economics and Business ( email )
Easton, PA 18042
United States
610-330-5303 (Phone)
610-330-8961 (Fax)
Sanjay Nawalkha
University of Massachusetts at Amherst - Eugene M. Isenberg School of Management ( email )
Amherst, MA 01003-4910
United States
413-687-2561 (Phone)
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References: 8
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