Title of article
On option pricing under a completely random measure via a generalized Esscher transform
Author/Authors
Lau، نويسنده , , John W. and Siu، نويسنده , , Tak Kuen، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
9
From page
99
To page
107
Abstract
In this paper, we develop an option valuation model when the price dynamics of the underlying risky asset is governed by the exponential of a pure jump process specified by a shifted kernel-biased completely random measure. The class of kernel-biased completely random measures is a rich class of jump-type processes introduced in [James, L.F., 2005. Bayesian Poisson process partition calculus with an application to Bayesian Lévy moving averages. Ann. Statist. 33, 1771–1799; James, L.F., 2006. Poisson calculus for spatial neutral to the right processes. Ann. Statist. 34, 416–440] and it provides a great deal of flexibility to incorporate both finite and infinite jump activities. It includes a general class of processes, namely, the generalized Gamma process, which in its turn includes the stable process, the Gamma process and the inverse Gaussian process as particular cases. The kernel-biased representation is a nice representation form and can describe different types of finite and infinite jump activities by choosing different mixing kernel functions. We employ a dynamic version of the Esscher transform, which resembles an exponential change of measures or a disintegration formula based on the Laplace functional used by James, to determine an equivalent martingale measure in the incomplete market. Closed-form option pricing formulae are obtained in some parametric cases, which provide practitioners with a convenient way to evaluate option prices.
Keywords
Esscher transform , Generalized Gamma processes , Laplace functionals , Option Pricing , Kernel-biased completely random measures
Journal title
Insurance Mathematics and Economics
Serial Year
2008
Journal title
Insurance Mathematics and Economics
Record number
1543603
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