We consider high-dimensional asset price models that are reduced in their dimension in order to reduce the complexity of the problem or the effect of the curse of dimensionality in the context of option pricing. We apply model order reduction (MOR) to obtain a reduced system. MOR has been previously studied for asymptotically stable controlled stochastic systems with zero initial conditions. However, stochastic differential equations modeling price processes are uncontrolled, have nonzero initial states and are often unstable. Therefore, we extend MOR schemes and combine ideas of techniques known for deterministic systems. This leads to a method providing a good pathwise approximation. After explaining the reduction procedure, the error of ...
Options are some of the most traded financial instruments and computing their price is a central tas...
A major challenge in computational finance is the pricing of options that depend on a large number o...
A major challenge in computational finance is the pricing of options that depend on a large number o...
We consider high-dimensional asset price models that are reduced in their dimension in order to redu...
We consider high-dimensional asset price models that are reduced in their dimension in order to redu...
AbstractAmerican options can be priced by solving linear complementary problems (LCPs) with paraboli...
American options can be priced by solving linear complementary problems (LCPs) with parabolic parti...
A major challenge in computational finance is the pricing of options that depend on a large number o...
European options can be priced by solving parabolic partial(-integro) differential equations under s...
One-way coupling often occurs in multi-dimensional models in finance. In this paper, we present a di...
This paper presents a model order reduction (MOR) approach for high dimensional problems in the anal...
AbstractAmerican options can be priced by solving linear complementary problems (LCPs) with paraboli...
AbstractOne-way coupling often occurs in multi-dimensional stochastic models in finance. In this pap...
One-way coupling often occurs in multi-dimensional stochastic models in finance. In this paper, we d...
A major challenge in computational finance is the pricing of options that depend on a large number o...
Options are some of the most traded financial instruments and computing their price is a central tas...
A major challenge in computational finance is the pricing of options that depend on a large number o...
A major challenge in computational finance is the pricing of options that depend on a large number o...
We consider high-dimensional asset price models that are reduced in their dimension in order to redu...
We consider high-dimensional asset price models that are reduced in their dimension in order to redu...
AbstractAmerican options can be priced by solving linear complementary problems (LCPs) with paraboli...
American options can be priced by solving linear complementary problems (LCPs) with parabolic parti...
A major challenge in computational finance is the pricing of options that depend on a large number o...
European options can be priced by solving parabolic partial(-integro) differential equations under s...
One-way coupling often occurs in multi-dimensional models in finance. In this paper, we present a di...
This paper presents a model order reduction (MOR) approach for high dimensional problems in the anal...
AbstractAmerican options can be priced by solving linear complementary problems (LCPs) with paraboli...
AbstractOne-way coupling often occurs in multi-dimensional stochastic models in finance. In this pap...
One-way coupling often occurs in multi-dimensional stochastic models in finance. In this paper, we d...
A major challenge in computational finance is the pricing of options that depend on a large number o...
Options are some of the most traded financial instruments and computing their price is a central tas...
A major challenge in computational finance is the pricing of options that depend on a large number o...
A major challenge in computational finance is the pricing of options that depend on a large number o...