Non-analogue Monte Carlo methods are useful when the direct simulation techniques are insufficient. To use the additional discretization, Monte Carlo estimates are biased and it is desirable to optimize the connection between discretization parameters and the sample size. In this connection, the book investigates variances of non-analogue Monte Carlo estimates, uniform minimization of variances by choosing a computational model and the minimization of computational cost of non-analogue Monte Carlo methods.This book is essentially new with respect to previous monographs on the Monte Carlo methods.Contents:Non-Analogue Monte Carlo Methods (NAMCM)Minimax NAMCMEffective NAMCM in Transfer TheorySolving Boundary Problems for Elliptic EquationsCost of Global Monte Carlo MethodsReadership: Applied mathematicians, computational mathematicians, physicists and engineers.Key Features:Brand new ideas and applicationsImportant contributors of library and information science from all over the worldThe integration of methodologies to information and library science and practice