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Statistical methods for physical science / edited by John L. Stanford and Stephen B. Vardeman.

Contributor(s): Series: Methods of experimental physics ; v. 28.©1994Description: 1 online resource (xix, 542 pages) : illustrationsContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9780124759732
  • 0124759734
  • 9780080860169
  • 0080860168
  • 1282287370
  • 9781282287372
Subject(s): Genre/Form: Additional physical formats: Print version:: Statistical methods for physical science.LOC classification:
  • Q182.3 .S7 1994eb
Online resources:
Contents:
W.R. Leo, Introduction to Probability Modeling. L. Hodges, Common Univariate Distributions. C. Chatfield, Random Process Models. N. Cressie, Models for Spatial Processes. P. Clifford, Monte Carlo Methods. J. Kitchin, Basic Statistical Inference. V.N. Nair and A.E. Freeny, Methods for Assessing Distributional Assumptions in One- and Two-Sample Problems. W.Q. Meeker and L.A. Escobar, Maximum Likelihood Methods for Fitting ParametricStatistical Models. G.A.F. Seber and C.J. Wild, Least Squares. W.J. Randel, Filtering and Data Preprocessing for Time Series Analysis. D.B. Percival, Spectral Analysis of Univariate and Bivariate Time Series. D.A. Lewis, Weak Periodic Signals in Point Process Data. D. Zimmerman, Statistical Analysis of Spatial Data. H.F. Martz and R.A. Waller, Bayesian Methods. J.M. Hauptman, Simulation of Physical Systems. J.L. Stanford and J.R. Ziemke, Field (Map) Statistics. F.L. Hulting and A.P. Jaworski, Modern Statistical Computing and Graphics. References. Tables. Subject Index.
Introduction to probability modeling / by William R. Leo -- Common univariate distributions / by Laurent Hodges -- Random process models / by Christopher Chatfield -- Models for spatial processes / by Noel Cressie -- Monte Carlo methods / by Peter Clifford -- Basic statistical inference / by John Kitchin -- Methods for assessing distributional assumptions in one-and two-sample problems / by Vijayan N. Nair and Anne E. Freeny -- Maximum likelihood methods for fitting parametric statistical models / by William Q. Meeker and Luis A. Escobar -- Least squares / by George A.F. Seber and Christopher J. Wild -- Filtering and data preprocessing for time series analysis / by William J. Randel -- Spectral analysis of univariate and bivariate time series / by Donald B. Percival -- Weak periodic signals in point process data / by David A. Lewis -- Statistical analysis of spatial data / by Dale Zimmerman -- Bayesian methods / by Harry F. Martz and Ray A. Waller -- Simulation of physical systems / by John M. Hauptman -- Field (map) statistics / by John L. Stanford and Jerald R. Ziemke -- Modern statistical computing and graphics / by Frederick L. Hulting and Andrzej P. Jaworski.
Summary: This volume of Methods of Experimental Physics provides an extensive introduction to probability and statistics in many areas of the physical sciences, with an emphasis on the emerging area of spatial statistics. The scope of topics covered is wide-ranging-the text discusses a variety of the most commonly used classical methods and addresses newer methods that are applicable or potentially important. The chapter authors motivate readers with their insightful discussions, augmenting their material with Key Features * Examines basic probability, including coverage of standard distributions, time series models, and Monte Carlo methods * Describes statistical methods, including basic inference, goodness of fit, maximum likelihood, and least squares * Addresses time series analysis, including filtering and spectral analysis * Includes simulations of physical experiments * Features applications of statistics to atmospheric physics and radio astronomy * Covers the increasingly important area of modern statistical computing.
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This volume of Methods of Experimental Physics provides an extensive introduction to probability and statistics in many areas of the physical sciences, with an emphasis on the emerging area of spatial statistics. The scope of topics covered is wide-ranging-the text discusses a variety of the most commonly used classical methods and addresses newer methods that are applicable or potentially important. The chapter authors motivate readers with their insightful discussions, augmenting their material with Key Features * Examines basic probability, including coverage of standard distributions, time series models, and Monte Carlo methods * Describes statistical methods, including basic inference, goodness of fit, maximum likelihood, and least squares * Addresses time series analysis, including filtering and spectral analysis * Includes simulations of physical experiments * Features applications of statistics to atmospheric physics and radio astronomy * Covers the increasingly important area of modern statistical computing.

W.R. Leo, Introduction to Probability Modeling. L. Hodges, Common Univariate Distributions. C. Chatfield, Random Process Models. N. Cressie, Models for Spatial Processes. P. Clifford, Monte Carlo Methods. J. Kitchin, Basic Statistical Inference. V.N. Nair and A.E. Freeny, Methods for Assessing Distributional Assumptions in One- and Two-Sample Problems. W.Q. Meeker and L.A. Escobar, Maximum Likelihood Methods for Fitting ParametricStatistical Models. G.A.F. Seber and C.J. Wild, Least Squares. W.J. Randel, Filtering and Data Preprocessing for Time Series Analysis. D.B. Percival, Spectral Analysis of Univariate and Bivariate Time Series. D.A. Lewis, Weak Periodic Signals in Point Process Data. D. Zimmerman, Statistical Analysis of Spatial Data. H.F. Martz and R.A. Waller, Bayesian Methods. J.M. Hauptman, Simulation of Physical Systems. J.L. Stanford and J.R. Ziemke, Field (Map) Statistics. F.L. Hulting and A.P. Jaworski, Modern Statistical Computing and Graphics. References. Tables. Subject Index.

Includes bibliographical references and index.

Introduction to probability modeling / by William R. Leo -- Common univariate distributions / by Laurent Hodges -- Random process models / by Christopher Chatfield -- Models for spatial processes / by Noel Cressie -- Monte Carlo methods / by Peter Clifford -- Basic statistical inference / by John Kitchin -- Methods for assessing distributional assumptions in one-and two-sample problems / by Vijayan N. Nair and Anne E. Freeny -- Maximum likelihood methods for fitting parametric statistical models / by William Q. Meeker and Luis A. Escobar -- Least squares / by George A.F. Seber and Christopher J. Wild -- Filtering and data preprocessing for time series analysis / by William J. Randel -- Spectral analysis of univariate and bivariate time series / by Donald B. Percival -- Weak periodic signals in point process data / by David A. Lewis -- Statistical analysis of spatial data / by Dale Zimmerman -- Bayesian methods / by Harry F. Martz and Ray A. Waller -- Simulation of physical systems / by John M. Hauptman -- Field (map) statistics / by John L. Stanford and Jerald R. Ziemke -- Modern statistical computing and graphics / by Frederick L. Hulting and Andrzej P. Jaworski.

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