Journal of Applied Probability

Some optimal stopping problems with nontrivial boundaries for pricing exotic options

Xin Guo and Larry Shepp
Source: J. Appl. Probab. Volume 38, Number 3 (2001), 647-658.

Abstract

We solve the following three optimal stopping problems for different kinds of options, based on the Black-Scholes model of stock fluctuations. (i) The perpetual lookback American option for the running maximum of the stock price during the life of the option. This problem is more difficult than the closely related one for the Russian option, and we show that for a class of utility functions the free boundary is governed by a nonlinear ordinary differential equation. (ii) A new type of stock option, for a company, where the company provides a guaranteed minimum as an added incentive in case the market appreciation of the stock is low, thereby making the option more attractive to the employee. We show that the value of this option is given by solving a nonalgebraic equation. (iii) A new call option for the option buyer who is risk-averse and gets to choose, a priori, a fixed constant l as a `hedge' on a possible downturn of the stock price, where the buyer gets the maximum of l and the price at any exercise time. We show that the optimal policy depends on the ratio of x/l, where x is the current stock price.

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Primary Subjects: 91B28, 60H30, 60G44
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Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.jap/1005091029
Digital Object Identifier: doi:10.1239/jap/1005091029
Mathematical Reviews number (MathSciNet): MR1860203
Zentralblatt MATH identifier: 1026.91048


2012 © Applied Probability Trust

Journal of Applied Probability

Journal of Applied Probability