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The Evolution of Security Designs

Thomas H. Noe
Oxford (SBS and Balliol)

Michael J. Rebello
University of Texas at Dallas - School of Management

Jun Wang
Zicklin School of Business, Baruch College


January 2004


Abstract:     
This paper embeds security design in a model of evolutionary learning. We consider a competitive and perfect financial market where agents, as in Allen and Gale (1988), have heterogeneous valuations for cash flows. Our point of departure is that, instead of assuming that agents are endowed with rational expectations, we model their behavior as the product of adaptive learning. Our results demonstrate that adaptive learning profoundly affects security design. Securities are mispriced even in the long run and optimal designs trade off under pricing against intrinsic value maximization. The evolutionary dominant security design calls for issuing securities that engender large losses with a small but positive probability, and otherwise produce stable payoffs. These designs are almost the exact opposite of the pure state claims which are optimal in the rational expectations framework.

Keywords: corporate financing, adaptive learning, genetic algorithm, security choice

JEL Classifications: C67, D40, G30

Working Paper Series

Date posted: March 17, 2004 ; Last revised: October 13, 2004

Suggested Citation

Noe, Thomas H., Rebello, Michael J. and Wang, Jun NMI2, The Evolution of Security Designs (January 2004). Available at SSRN: http://ssrn.com/abstract=511044


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Contact Information

Michael J. Rebello (Contact Author)
University of Texas at Dallas - School of Management ( email )
P.O. Box 830688
Richardson, TX 75083-0688
United States
Thomas H. Noe
Oxford (SBS and Balliol) ( email )
Park End Street
Oxford OX1 1HP
Great Britain
+44(0)1865288933 (Phone)
Jun Jonathan NMI2 Wang
Zicklin School of Business, Baruch College ( email )
One Bernard Baruch Way
Box B10-225
New York, NC 10010
United States
646-312-3507 (Phone)
646-312-3451 (Fax)
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