We consider the numerical solution of diffusion problems in for and for in dimension . We use a wavelet based sparse grid space discretization with mesh-width and order , and discontinuous Galerkin time-discretization of order on a geometric sequence of many time steps. The linear systems in each time step are solved iteratively by GMRES iterations with a wavelet preconditioner. We prove that this algorithm gives an -error of for where is the total number of operations,...
Let be a strongly elliptic operator on a -dimensional manifold (polyhedra or boundaries of polyhedra are also allowed). An operator equation with stochastic data is considered. The goal of the computation is the mean field and higher moments , , , of the solution. We discretize the mean field problem using a FEM with hierarchical basis and degrees of freedom. We present a Monte-Carlo algorithm and a deterministic algorithm for the approximation of the moment for . The key tool...
We consider the numerical solution of diffusion problems in (0,) x Ω for and for in
dimension d ≥ 1. We use a wavelet based sparse grid
space discretization with mesh-width and order d ≥ 1, and
discontinuous Galerkin time-discretization of order on a geometric sequence of many time
steps. The linear systems in each time step are solved iteratively
by GMRES iterations with a wavelet preconditioner.
We prove that this algorithm gives an
(Ω)-error of
for where is the...
Galerkin discretizations of integral equations in require
the evaluation of integrals
where
,
are -simplices and has a singularity
at = . We assume that is Gevrey smooth for
and
satisfies bounds for the derivatives which allow algebraic singularities
at = . This holds for kernel functions commonly occurring in integral
equations. We construct a family of quadrature rules using
function evaluations of which achieves exponential...
Arbitrage-free prices of European contracts on risky assets whose log-returns are modelled by Lévy processes satisfy a parabolic partial integro-differential equation (PIDE) . This PIDE is localized to bounded domains and the error due to this localization is estimated. The localized PIDE is discretized by the -scheme in time and a wavelet Galerkin method with degrees of freedom in log-price space. The dense matrix for can be replaced by a sparse matrix in the wavelet basis, and the linear...
Arbitrage-free prices of European contracts on risky assets whose
log-returns are modelled by Lévy processes satisfy
a parabolic partial integro-differential equation (PIDE)
.
This PIDE is localized to
bounded domains and the error due to this localization is
estimated. The localized PIDE is discretized by the
-scheme in time and a wavelet Galerkin method with
degrees of freedom in log-price space.
The dense matrix for can be replaced by a sparse
matrix in the wavelet basis, and the linear...
Galerkin discretizations of integral equations in require
the evaluation of integrals
where
,
are -simplices and has a singularity
at = . We assume that is Gevrey smooth for
and
satisfies bounds for the derivatives which allow algebraic singularities
at = . This holds for kernel functions commonly occurring in integral
equations. We construct a family of quadrature rules using
function evaluations of which achieves exponential...
Motivated by the pricing of American options for baskets we
consider a parabolic variational inequality in a bounded
polyhedral domain with a continuous piecewise
smooth obstacle. We formulate a fully discrete method by using
piecewise linear finite elements in space and the backward Euler
method in time. We define an error estimator and show
that it gives an upper bound for the error in
(Ω)). The error estimator is localized in the
sense that the size of the elliptic residual is only relevant...
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