Description

Book Synopsis
Intermediate Probability is the natural extension of the author''s Fundamental Probability. It details several highly important topics, from standard ones such as order statistics, multivariate normal, and convergence concepts, to more advanced ones which are usually not addressed at this mathematical level, or have never previously appeared in textbook form. The author adopts a computational approach throughout, allowing the reader to directly implement the methods, thus greatly enhancing the learning experience and clearly illustrating the applicability, strengths, and weaknesses of the theory.

The book:

  • Places great emphasis on the numeric computation of convolutions of random variables, via numeric integration, inversion theorems, fast Fourier transforms, saddlepoint approximations, and simulation.
  • Provides introductory material to required mathematical topics such as complex numbers, Laplace and Fourier transforms, matrix algebra, confluent hypergeometric

    Trade Review
    "I thoroughly enjoyed Intermediate Probability. I was so thrilled with it that I have shared it with some of my colleagues. They have called it a 'gold mine' of problems and resources, and describing it as 'amazing.' ... I highly recommend it." (Journal of the American Statistical Association, September 2009)

    "The reader-friendly style of the text itself would make the book appropriate for self-study or classroom adoption." (MAA Reviews, December 2007)



    Table of Contents
    Preface.

    I Sums of Random Variables.

    1 Generating functions.

    1.1 The moment generating function.

    1.2 Characteristic functions.

    1.3 Use of the fast Fourier transform.

    1.4 Multivariate case.

    1.5 Problems.

    2 Sums and other functions of several random variables.

    2.1 Weighted sums of independent random variables.

    2.2 Exact integral expressions for functions of two continuous random

    variables.

    2.3 Approximating the mean and variance.

    2.4 Problems.

    3 The multivariate normal distribution.

    3.1 Vector expectation and variance.

    3.2 Basic properties of the multivariate normal.

    3.3 Density and moment generating function.

    3.4 Simulation and c.d.f. calculation.

    3.5 Marginal and conditional normal distributions.

    3.6 Partial correlation.

    3.7 Joint distribution of Xbar and S2 for i.i.d. normal samples.

    3.8 Matrix algebra.

    3.9 Problems.

    II Asymptotics and Other Approximations.

    4 Convergence concepts.

    4.1 Inequalities for random variables.

    4.2 Convergence of sequences of sets.

    4.3 Convergence of sequences of random variables.

    4.4 The central limit theorem.

    4.5 Problems.

    5 Saddlepoint approximations.

    5.1 Univariate.

    5.2 Multivariate.

    5.3 The hypergeometric functions 1F1 and 2F1.

    5.4 Problems.

    6 Order statistics.

    6.1 Distribution theory for i.i.d. samples.

    6.2 Further examples.

    6.3 Distribution theory for dependent samples.

    6.4 Problems.

    III More Flexible and Advanced Random Variables.

    7 Generalizing and mixing.

    7.1 Basic methods of extension.

    7.2 Weighted sums of independent random variables.

    7.3 Mixtures.

    7.4 Problems.

    8 The stable Paretian distribution.

    8.1 Symmetric stable.

    8.2 Asymmetric stable.

    8.3 Moments.

    8.4 Simulation.

    8.5 Generalized central limit theorem.

    9 Generalized inverse Gaussian and generalized hyperbolic distributions.

    9.1 Introduction.

    9.2 The modified Bessel function of the third kind.

    9.3 Mixtures of normal distributions.

    9.4 The generalized inverse Gaussian distribution.

    9.5 The generalized hyperbolic distribution.

    9.6 Properties of the GHyp distribution family.

    9.7 Problems.

    10 Noncentral distributions.

    10.1 Noncentral chi-square.

    10.2 Singly and doubly noncentral F.

    10.3 Noncentral beta.

    10.4 Singly and doubly noncentral t.

    10.5 Saddlepoint uniqueness for the doubly noncentral F.

    10.6 Problems.

    A Notation and distribution tables.

    References.

    Index.

Intermediate Probability

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    A Hardback by Marc S. Paolella

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      Publisher: John Wiley & Sons Inc
      Publication Date: 24/08/2007
      ISBN13: 9780470026373, 978-0470026373
      ISBN10: 0470026375
      Also in:
      Mathematics

      Description

      Book Synopsis
      Intermediate Probability is the natural extension of the author''s Fundamental Probability. It details several highly important topics, from standard ones such as order statistics, multivariate normal, and convergence concepts, to more advanced ones which are usually not addressed at this mathematical level, or have never previously appeared in textbook form. The author adopts a computational approach throughout, allowing the reader to directly implement the methods, thus greatly enhancing the learning experience and clearly illustrating the applicability, strengths, and weaknesses of the theory.

      The book:

      • Places great emphasis on the numeric computation of convolutions of random variables, via numeric integration, inversion theorems, fast Fourier transforms, saddlepoint approximations, and simulation.
      • Provides introductory material to required mathematical topics such as complex numbers, Laplace and Fourier transforms, matrix algebra, confluent hypergeometric

        Trade Review
        "I thoroughly enjoyed Intermediate Probability. I was so thrilled with it that I have shared it with some of my colleagues. They have called it a 'gold mine' of problems and resources, and describing it as 'amazing.' ... I highly recommend it." (Journal of the American Statistical Association, September 2009)

        "The reader-friendly style of the text itself would make the book appropriate for self-study or classroom adoption." (MAA Reviews, December 2007)



        Table of Contents
        Preface.

        I Sums of Random Variables.

        1 Generating functions.

        1.1 The moment generating function.

        1.2 Characteristic functions.

        1.3 Use of the fast Fourier transform.

        1.4 Multivariate case.

        1.5 Problems.

        2 Sums and other functions of several random variables.

        2.1 Weighted sums of independent random variables.

        2.2 Exact integral expressions for functions of two continuous random

        variables.

        2.3 Approximating the mean and variance.

        2.4 Problems.

        3 The multivariate normal distribution.

        3.1 Vector expectation and variance.

        3.2 Basic properties of the multivariate normal.

        3.3 Density and moment generating function.

        3.4 Simulation and c.d.f. calculation.

        3.5 Marginal and conditional normal distributions.

        3.6 Partial correlation.

        3.7 Joint distribution of Xbar and S2 for i.i.d. normal samples.

        3.8 Matrix algebra.

        3.9 Problems.

        II Asymptotics and Other Approximations.

        4 Convergence concepts.

        4.1 Inequalities for random variables.

        4.2 Convergence of sequences of sets.

        4.3 Convergence of sequences of random variables.

        4.4 The central limit theorem.

        4.5 Problems.

        5 Saddlepoint approximations.

        5.1 Univariate.

        5.2 Multivariate.

        5.3 The hypergeometric functions 1F1 and 2F1.

        5.4 Problems.

        6 Order statistics.

        6.1 Distribution theory for i.i.d. samples.

        6.2 Further examples.

        6.3 Distribution theory for dependent samples.

        6.4 Problems.

        III More Flexible and Advanced Random Variables.

        7 Generalizing and mixing.

        7.1 Basic methods of extension.

        7.2 Weighted sums of independent random variables.

        7.3 Mixtures.

        7.4 Problems.

        8 The stable Paretian distribution.

        8.1 Symmetric stable.

        8.2 Asymmetric stable.

        8.3 Moments.

        8.4 Simulation.

        8.5 Generalized central limit theorem.

        9 Generalized inverse Gaussian and generalized hyperbolic distributions.

        9.1 Introduction.

        9.2 The modified Bessel function of the third kind.

        9.3 Mixtures of normal distributions.

        9.4 The generalized inverse Gaussian distribution.

        9.5 The generalized hyperbolic distribution.

        9.6 Properties of the GHyp distribution family.

        9.7 Problems.

        10 Noncentral distributions.

        10.1 Noncentral chi-square.

        10.2 Singly and doubly noncentral F.

        10.3 Noncentral beta.

        10.4 Singly and doubly noncentral t.

        10.5 Saddlepoint uniqueness for the doubly noncentral F.

        10.6 Problems.

        A Notation and distribution tables.

        References.

        Index.

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