Mixing monte-carlo and partial differential equations for pricing options

There is a need for very fast option pricers when the financial objects are modeled by complex systems of stochastic differential equations. Here the authors investigate option pricers based on mixed Monte-Carlo partial differential solvers for stochastic volatility models such as Heston’s. It is fo...

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Veröffentlicht in:Chinese annals of mathematics. Serie B 2013-03, Vol.34 (2), p.255-276
Hauptverfasser: Lipp, Tobias, Loeper, Grégoire, Pironneau, Olivier
Format: Artikel
Sprache:eng
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Zusammenfassung:There is a need for very fast option pricers when the financial objects are modeled by complex systems of stochastic differential equations. Here the authors investigate option pricers based on mixed Monte-Carlo partial differential solvers for stochastic volatility models such as Heston’s. It is found that orders of magnitude in speed are gained on full Monte-Carlo algorithms by solving all equations but one by a Monte-Carlo method, and pricing the underlying asset by a partial differential equation with random coefficients, derived by Itô calculus. This strategy is investigated for vanilla options, barrier options and American options with stochastic volatilities and jumps optionally.
ISSN:0252-9599
1860-6261
DOI:10.1007/s11401-013-0763-2