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A Comparison of Higher-Order Weak Numerical Schemes for Stopped Stochastic Differential Equations

Published online by Cambridge University Press:  31 August 2016

Francisco Bernal*
Affiliation:
INESC-ID\IST, TU Lisbon. Rua Alves Redol 9, 1000-029 Lisbon, Portugal Center for Mathematics and its Applications, Department of Mathematics, Instituto Superior Técnico. Av. Rovisco Pais 1049-001 Lisbon, Portugal
Juan A. Acebrón*
Affiliation:
INESC-ID\IST, TU Lisbon. Rua Alves Redol 9, 1000-029 Lisbon, Portugal ISCTE - Instituto Universitário de Lisboa Departamento de Ciências e Tecnologias de Informação. Av. das Forças Armadas 1649-026 Lisbon, Portugal
*
*Corresponding author. Email addresses:[email protected] (F. Bernal), [email protected] (J. A. Acebrón)
*Corresponding author. Email addresses:[email protected] (F. Bernal), [email protected] (J. A. Acebrón)
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Abstract

We review, implement, and compare numerical integration schemes for spatially bounded diffusions stopped at the boundary which possess a convergence rate of the discretization error with respect to the timestep h higher than . We address specific implementation issues of the most general-purpose of such schemes. They have been coded into a single Matlab program and compared, according to their accuracy and computational cost, on a wide range of problems in up to ℝ48. The paper is self-contained and the code will be made freely downloadable.

Type
Research Article
Copyright
Copyright © Global-Science Press 2016 

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