Strategies for quasi-Monte Carlo

Bibliographic Information

Strategies for quasi-Monte Carlo

Bennett L. Fox

(International series in operations research & management science, 22)

Kluwer Academic, c1999

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Note

Includes bibliographical references (p. [349]-362) and index

Description and Table of Contents

Description

Strategies for Quasi-Monte Carlo builds a framework to design and analyze strategies for randomized quasi-Monte Carlo (RQMC). One key to efficient simulation using RQMC is to structure problems to reveal a small set of important variables, their number being the effective dimension, while the other variables collectively are relatively insignificant. Another is smoothing. The book provides many illustrations of both keys, in particular for problems involving Poisson processes or Gaussian processes. RQMC beats grids by a huge margin. With low effective dimension, RQMC is an order-of-magnitude more efficient than standard Monte Carlo. With, in addition, certain smoothness - perhaps induced - RQMC is an order-of-magnitude more efficient than deterministic QMC. Unlike the latter, RQMC permits error estimation via the central limit theorem. For random-dimensional problems, such as occur with discrete-event simulation, RQMC gets judiciously combined with standard Monte Carlo to keep memory requirements bounded. This monograph has been designed to appeal to a diverse audience, including those with applications in queueing, operations research, computational finance, mathematical programming, partial differential equations (both deterministic and stochastic), and particle transport, as well as to probabilists and statisticians wanting to know how to apply effectively a powerful tool, and to those interested in numerical integration or optimization in their own right. It recognizes that the heart of practical application is algorithms, so pseudocodes appear throughout the book. While not primarily a textbook, it is suitable as a supplementary text for certain graduate courses. As a reference, it belongs on the shelf of everyone with a serious interest in improving simulation efficiency. Moreover, it will be a valuable reference to all those individuals interested in improving simulation efficiency with more than incremental increases.

Table of Contents

Preface. Acknowledgements. 1. Introduction. 2. Smoothing. 3. Generating Poisson Processes. 4. Permuting Order Statistics. 5. Generating Bernoulli Trials. 6. Generating Gaussian Processes. 7. Smoothing Summation. 8. Smoothing Variate Generation. 9. Analysis of Variance. 10. Bernoulli Trials: Examples. 11. Poisson Processes: Auxiliary Matter. 12. Background on Deterministic QMC. 13. Optimization. 14. Background on Randomized QMC. 15. Pseudocodes. Bibliography. Index.

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Details

  • NCID
    BA42961447
  • ISBN
    • 0792385802
  • LCCN
    99034938
  • Country Code
    us
  • Title Language Code
    eng
  • Text Language Code
    eng
  • Place of Publication
    Boston
  • Pages/Volumes
    xxxiv, 368 p.
  • Size
    25 cm
  • Classification
  • Subject Headings
  • Parent Bibliography ID
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