Sampling-based computational methods have become a fundamental part of
the numerical toolset of practitioners and researchers across an
enormous number of different applied domains and academic disciplines.
This book provides a broad treatment of such sampling-based methods, as
well as accompanying mathematical analysis of the convergence properties
of the methods discussed. It is the first rigorous and comprehensive
advanced book on stochastic simulation. The reach of the ideas is
illustrated by discussing a wide range of applications and the models
that have found wide usage. The first half of the book focuses on
general methods; the second half discusses model-specific algorithms. A
large amount of exercises and illustrations are included, making the
book of value to students, practitioners and researchers in a broad
range of fields.