Abstract.
We propose an efficient Monte Carlo approach to compute boundary crossing probabilities (BCP) for Brownian motion and a large class of diffusion processes, the method of adaptive control variables. For the Brownian motion the boundary b (or the boundaries in case of two-sided boundary crossing probabilities) is approximated by a piecewise linear boundary , which is linear on m intervals. Monte Carlo estimators of the corresponding BCP are based on an m-dimensional Gaussian distribution. Let N denote the number of (univariate) Gaussian variables used. The mean squared error for the boundary
is of order
, leading to a mean squared error for the boundary b of order
with
, if the difference of the (exact) BCP's for b and
is
. Typically, for infinite-dimensional Monte Carlo methods, the convergence rate is less than the finite-dimensional
.
Let be a further approximating boundary which is linear on k intervals. If k is small compared to m, the corresponding BCP may be estimated with high accuracy. The BCP for
as control variable improves the convergence rate of the Monte Carlo estimator to
with
. The constant
depends on the correlation of the estimators for
and
. We show that this method of adaptive control variable improves the convergence rate considerably. Iterating control variables leads to a rate of convergence (of the mean squared error) of order
, reducing the problem of estimating the BCP to an essentially finite-dimensional problem.
© 2012 by Walter de Gruyter Berlin Boston
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Articles in the same Issue
- Masthead
- A note on Newton's method for system of stochastic differential equations
- Quantization based recursive importance sampling
- Dynamical system generated by algebraic method and low discrepancy sequences
- Improving the Monte Carlo estimation of boundary crossing probabilities by control variables