Liu, Jun S. Monte Carlo strategies in scientific computing. (English) Zbl 0991.65001 Springer Series in Statistics. New York, NY: Springer. xvi, 343 p. DM 149.69; sFr 128.94; £51.50; $ 69.95 (2001). This recent addition to the Monte Carlo literature is divided into 13 chapters and an Appendix. It provides both the methodology and the underlying theory for applying Monte Carlo techniques to a broad range of problems.After a short discussion (Chapters 1 and 2) covering basic Monte Carlo techniques (including the exact sampling method for chain-structured models), the author moves (Chapters 3 and 4) to more advanced subjects as sequential Monte Carlo and its use in different applied fields as molecular simulation, population genetics, computational biology, Bayesian missing data problems, and signal processing problems.In the next chapters the author focuses his attention on Markov chain based dynamic Monte Carlo strategies: the Metropolis algorithm (Chapter 5), the Gibbs sampler (Chapter 6), cluster algorithms for the Ising model (Chapter 7), conditional sampling (Chapter 8), molecular dynamics and the method of hybrid Monte Carlo (Chapter 9), efficient Monte Carlo sampling (Chapters 10 and 11), Markov chains and their convergence (Chapter 12).At the end of the book (Chapter 13) the author discusses some theoretical topics related to MCMC. In the Appendix the author outlines the basics in probability theory and statistical inference procedures.As indicated by the author, this book is intended to serve three audiences: researchers specializing in the study of Monte Carlo algorithms, scientists who are interested in using advanced Monte Carlo techniques, and graduate students in statistics, computational biology, and computer sciences who want to learn about Monte Carlo computations. Overall, this book is a valuable and recommended reference to Monte Carlo methods; particularly it draws the attention to recent work in sequential Monte Carlo. Reviewer: Radu Theodorescu (Quebec) Cited in 4 ReviewsCited in 381 Documents MSC: 65C05 Monte Carlo methods 65C40 Numerical analysis or methods applied to Markov chains 60J22 Computational methods in Markov chains 62D05 Sampling theory, sample surveys 65-02 Research exposition (monographs, survey articles) pertaining to numerical analysis 65C60 Computational problems in statistics (MSC2010) 82C22 Interacting particle systems in time-dependent statistical mechanics 92D25 Population dynamics (general) 94A12 Signal theory (characterization, reconstruction, filtering, etc.) Keywords:textbook; Monte Carlo; sequential Monte Carlo; Metropolis algorithm; Gibbs sampler; Ising model; Markov Monte Carlo; exact sampling method; chain-structured models; molecular simulation; population genetics; computational biology; Bayesian missing data problems; signal processing; cluster algorithms; molecular dynamics; Markov chains; convergence Software:HybridMC PDFBibTeX XMLCite \textit{J. S. Liu}, Monte Carlo strategies in scientific computing. New York, NY: Springer (2001; Zbl 0991.65001)