Description

Book Synopsis

A well-balanced introduction to probability theory and mathematical statistics

Featuring updated material, An Introduction to Probability and Statistics, Third Edition remains a solid overview to probability theory and mathematical statistics. Divided intothree parts, the Third Edition begins by presenting the fundamentals and foundationsof probability. The second part addresses statistical inference, and the remainingchapters focus on special topics.

An Introduction to Probability and Statistics, Third Edition includes:

  • A new section on regression analysis to include multiple regression, logistic regression, and Poisson regression
  • A reorganized chapter on large sample theory to emphasize the growing role of asymptotic statistics
  • Additional topical coverage on bootstrapping, estimation procedures, and resampling
  • Discussions on invariance, ancillary statistics, conjugate prior distributions, and invaria

    Trade Review

    "The book is an ideal reference and resource for scientists and engineers in the elds of statistics, mathematics, physics, industrial management, and engineering. The book is also an excellent text for upper-undergraduate and graduate-level students majoring in probability and statistics." (Zentralblatt MATH, 2016)



    Table of Contents

    PREFACE TO THE THIRD EDITION xiii

    PREFACE TO THE SECOND EDITION xv

    PREFACE TO THE FIRST EDITION xvii

    ACKNOWLEDGMENTS xix

    ENUMERATION OF THEOREMS AND REFERENCES xxi

    1 Probability 1

    1.1 Introduction 1

    1.2 Sample Space 2

    1.3 Probability Axioms 7

    1.4 Combinatorics: Probability on Finite Sample Spaces 20

    1.5 Conditional Probability and Bayes Theorem 26

    1.6 Independence of Events 31

    2 Random Variables and Their Probability Distributions 39

    2.1 Introduction 39

    2.2 Random Variables 39

    2.3 Probability Distribution of a Random Variable 42

    2.4 Discrete and Continuous Random Variables 47

    2.5 Functions of a Random Variable 55

    3 Moments and Generating Functions 67

    3.1 Introduction 67

    3.2 Moments of a Distribution Function 67

    3.3 Generating Functions 83

    3.4 Some Moment Inequalities 93

    4 Multiple Random Variables 99

    4.1 Introduction 99

    4.2 Multiple Random Variables 99

    4.3 Independent Random Variables 114

    4.4 Functions of Several Random Variables 123

    4.5 Covariance, Correlation and Moments 143

    4.6 Conditional Expectation 157

    4.7 Order Statistics and Their Distributions 164

    5 Some Special Distributions 173

    5.1 Introduction 173

    5.2 Some Discrete Distributions 173

    5.2.1 Degenerate Distribution 173

    5.2.2 Two-Point Distribution 174

    5.2.3 Uniform Distribution on n Points 175

    5.2.4 Binomial Distribution 176

    5.2.5 Negative Binomial Distribution (Pascal or Waiting Time Distribution) 178

    5.2.6 Hypergeometric Distribution 183

    5.2.7 Negative Hypergeometric Distribution 185

    5.2.8 Poisson Distribution 186

    5.2.9 Multinomial Distribution 189

    5.2.10 Multivariate Hypergeometric Distribution 192

    5.2.11 Multivariate Negative Binomial Distribution 192

    5.3 Some Continuous Distributions 196

    5.3.1 Uniform Distribution (Rectangular Distribution) 199

    5.3.2 Gamma Distribution 202

    5.3.3 Beta Distribution 210

    5.3.4 Cauchy Distribution 213

    5.3.5 Normal Distribution (the Gaussian Law) 216

    5.3.6 Some Other Continuous Distributions 222

    5.4 Bivariate and Multivariate Normal Distributions 228

    5.5 Exponential Family of Distributions 240

    6 Sample Statistics and Their Distributions 245

    6.1 Introduction 245

    6.2 Random Sampling 246

    6.3 Sample Characteristics and Their Distributions 249

    6.4 Chi-Square, t-, and F-Distributions: Exact Sampling Distributions 262

    6.5 Distribution of (X,S2) in Sampling from a Normal Population 271

    6.6 Sampling from a Bivariate Normal Distribution 276

    7 Basic Asymptotics: Large Sample Theory 285

    7.1 Introduction 285

    7.2 Modes of Convergence 285

    7.3 Weak Law of Large Numbers 302

    7.4 Strong Law of Large Numbers 308

    7.5 Limiting Moment Generating Functions 316

    7.6 Central Limit Theorem 321

    7.7 Large Sample Theory 331

    8 Parametric Point Estimation 337

    8.1 Introduction 337

    8.2 Problem of Point Estimation 338

    8.3 Sufficiency, Completeness and Ancillarity 342

    8.4 Unbiased Estimation 359

    8.5 Unbiased Estimation (Continued): A Lower Bound for the Variance of An Estimator 372

    8.6 Substitution Principle (Method of Moments) 386

    8.7 Maximum Likelihood Estimators 388

    8.8 Bayes and Minimax Estimation 401

    8.9 Principle of Equivariance 418

    9 Neyman–Pearson Theory of Testing of Hypotheses 429

    9.1 Introduction 429

    9.2 Some Fundamental Notions of Hypotheses Testing 429

    9.3 Neyman–Pearson Lemma 438

    9.4 Families with Monotone Likelihood Ratio 446

    9.5 Unbiased and Invariant Tests 453

    9.6 Locally Most Powerful Tests 459

    10 Some Further Results on Hypotheses Testing 463

    10.1 Introduction 463

    10.2 Generalized Likelihood Ratio Tests 463

    10.3 Chi-Square Tests 472

    10.4 t-Tests 484

    10.5 F-Tests 489

    10.6 Bayes and Minimax Procedures 491

    11 Confidence Estimation 499

    11.1 Introduction 499

    11.2 Some Fundamental Notions of Confidence Estimation 499

    11.3 Methods of Finding Confidence Intervals 504

    11.4 Shortest-Length Confidence Intervals 517

    11.5 Unbiased and Equivariant Confidence Intervals 523

    11.6 Resampling: Bootstrap Method 530

    12 General Linear Hypothesis 535

    12.1 Introduction 535

    12.2 General Linear Hypothesis 535

    12.3 Regression Analysis 543

    12.3.1 Multiple Linear Regression 543

    12.3.2 Logistic and Poisson Regression 551

    12.4 One-Way Analysis of Variance 554

    12.5 Two-Way Analysis of Variance with One Observation Per Cell 560

    12.6 Two-Way Analysis of Variance with Interaction 566

    13 Nonparametric Statistical Inference 575

    13.1 Introduction 575

    13.2 U-Statistics 576

    13.3 Some Single-Sample Problems 584

    13.3.1 Goodness-of-Fit Problem 584

    13.3.2 Problem of Location 590

    13.4 Some Two-Sample Problems 599

    13.4.1 Median Test 601

    13.4.2 Kolmogorov–Smirnov Test 602

    13.4.3 The Mann–Whitney–Wilcoxon Test 604

    13.5 Tests of Independence 608

    13.5.1 Chi-square Test of Independence—Contingency Tables 608

    13.5.2 Kendall’s Tau 611

    13.5.3 Spearman’s Rank Correlation Coefficient 614

    13.6 Some Applications of Order Statistics 619

    13.7 Robustness 625

    13.7.1 Effect of Deviations from Model Assumptions on Some Parametric Procedures 625

    13.7.2 Some Robust Procedures 631

    FREQUENTLY USED SYMBOLS AND ABBREVIATIONS 637

    REFERENCES 641

    STATISTICAL TABLES 647

    ANSWERS TO SELECTED PROBLEMS 667

    AUTHOR INDEX 677

    SUBJECT INDEX 679

An Introduction to Probability and Statistics

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    RRP £111.95 – you save £11.19 (9%)

    Order before 4pm today for delivery by Mon 22 Jun 2026.

    A Hardback by Vijay K. Rohatgi, A. K. Md. Ehsanes Saleh


      View other formats and editions of An Introduction to Probability and Statistics by Vijay K. Rohatgi

      Publisher: John Wiley & Sons Inc
      Publication Date: 16/10/2015
      ISBN13: 9781118799642, 978-1118799642
      ISBN10: 111879964X

      Description

      Book Synopsis

      A well-balanced introduction to probability theory and mathematical statistics

      Featuring updated material, An Introduction to Probability and Statistics, Third Edition remains a solid overview to probability theory and mathematical statistics. Divided intothree parts, the Third Edition begins by presenting the fundamentals and foundationsof probability. The second part addresses statistical inference, and the remainingchapters focus on special topics.

      An Introduction to Probability and Statistics, Third Edition includes:

      • A new section on regression analysis to include multiple regression, logistic regression, and Poisson regression
      • A reorganized chapter on large sample theory to emphasize the growing role of asymptotic statistics
      • Additional topical coverage on bootstrapping, estimation procedures, and resampling
      • Discussions on invariance, ancillary statistics, conjugate prior distributions, and invaria

        Trade Review

        "The book is an ideal reference and resource for scientists and engineers in the elds of statistics, mathematics, physics, industrial management, and engineering. The book is also an excellent text for upper-undergraduate and graduate-level students majoring in probability and statistics." (Zentralblatt MATH, 2016)



        Table of Contents

        PREFACE TO THE THIRD EDITION xiii

        PREFACE TO THE SECOND EDITION xv

        PREFACE TO THE FIRST EDITION xvii

        ACKNOWLEDGMENTS xix

        ENUMERATION OF THEOREMS AND REFERENCES xxi

        1 Probability 1

        1.1 Introduction 1

        1.2 Sample Space 2

        1.3 Probability Axioms 7

        1.4 Combinatorics: Probability on Finite Sample Spaces 20

        1.5 Conditional Probability and Bayes Theorem 26

        1.6 Independence of Events 31

        2 Random Variables and Their Probability Distributions 39

        2.1 Introduction 39

        2.2 Random Variables 39

        2.3 Probability Distribution of a Random Variable 42

        2.4 Discrete and Continuous Random Variables 47

        2.5 Functions of a Random Variable 55

        3 Moments and Generating Functions 67

        3.1 Introduction 67

        3.2 Moments of a Distribution Function 67

        3.3 Generating Functions 83

        3.4 Some Moment Inequalities 93

        4 Multiple Random Variables 99

        4.1 Introduction 99

        4.2 Multiple Random Variables 99

        4.3 Independent Random Variables 114

        4.4 Functions of Several Random Variables 123

        4.5 Covariance, Correlation and Moments 143

        4.6 Conditional Expectation 157

        4.7 Order Statistics and Their Distributions 164

        5 Some Special Distributions 173

        5.1 Introduction 173

        5.2 Some Discrete Distributions 173

        5.2.1 Degenerate Distribution 173

        5.2.2 Two-Point Distribution 174

        5.2.3 Uniform Distribution on n Points 175

        5.2.4 Binomial Distribution 176

        5.2.5 Negative Binomial Distribution (Pascal or Waiting Time Distribution) 178

        5.2.6 Hypergeometric Distribution 183

        5.2.7 Negative Hypergeometric Distribution 185

        5.2.8 Poisson Distribution 186

        5.2.9 Multinomial Distribution 189

        5.2.10 Multivariate Hypergeometric Distribution 192

        5.2.11 Multivariate Negative Binomial Distribution 192

        5.3 Some Continuous Distributions 196

        5.3.1 Uniform Distribution (Rectangular Distribution) 199

        5.3.2 Gamma Distribution 202

        5.3.3 Beta Distribution 210

        5.3.4 Cauchy Distribution 213

        5.3.5 Normal Distribution (the Gaussian Law) 216

        5.3.6 Some Other Continuous Distributions 222

        5.4 Bivariate and Multivariate Normal Distributions 228

        5.5 Exponential Family of Distributions 240

        6 Sample Statistics and Their Distributions 245

        6.1 Introduction 245

        6.2 Random Sampling 246

        6.3 Sample Characteristics and Their Distributions 249

        6.4 Chi-Square, t-, and F-Distributions: Exact Sampling Distributions 262

        6.5 Distribution of (X,S2) in Sampling from a Normal Population 271

        6.6 Sampling from a Bivariate Normal Distribution 276

        7 Basic Asymptotics: Large Sample Theory 285

        7.1 Introduction 285

        7.2 Modes of Convergence 285

        7.3 Weak Law of Large Numbers 302

        7.4 Strong Law of Large Numbers 308

        7.5 Limiting Moment Generating Functions 316

        7.6 Central Limit Theorem 321

        7.7 Large Sample Theory 331

        8 Parametric Point Estimation 337

        8.1 Introduction 337

        8.2 Problem of Point Estimation 338

        8.3 Sufficiency, Completeness and Ancillarity 342

        8.4 Unbiased Estimation 359

        8.5 Unbiased Estimation (Continued): A Lower Bound for the Variance of An Estimator 372

        8.6 Substitution Principle (Method of Moments) 386

        8.7 Maximum Likelihood Estimators 388

        8.8 Bayes and Minimax Estimation 401

        8.9 Principle of Equivariance 418

        9 Neyman–Pearson Theory of Testing of Hypotheses 429

        9.1 Introduction 429

        9.2 Some Fundamental Notions of Hypotheses Testing 429

        9.3 Neyman–Pearson Lemma 438

        9.4 Families with Monotone Likelihood Ratio 446

        9.5 Unbiased and Invariant Tests 453

        9.6 Locally Most Powerful Tests 459

        10 Some Further Results on Hypotheses Testing 463

        10.1 Introduction 463

        10.2 Generalized Likelihood Ratio Tests 463

        10.3 Chi-Square Tests 472

        10.4 t-Tests 484

        10.5 F-Tests 489

        10.6 Bayes and Minimax Procedures 491

        11 Confidence Estimation 499

        11.1 Introduction 499

        11.2 Some Fundamental Notions of Confidence Estimation 499

        11.3 Methods of Finding Confidence Intervals 504

        11.4 Shortest-Length Confidence Intervals 517

        11.5 Unbiased and Equivariant Confidence Intervals 523

        11.6 Resampling: Bootstrap Method 530

        12 General Linear Hypothesis 535

        12.1 Introduction 535

        12.2 General Linear Hypothesis 535

        12.3 Regression Analysis 543

        12.3.1 Multiple Linear Regression 543

        12.3.2 Logistic and Poisson Regression 551

        12.4 One-Way Analysis of Variance 554

        12.5 Two-Way Analysis of Variance with One Observation Per Cell 560

        12.6 Two-Way Analysis of Variance with Interaction 566

        13 Nonparametric Statistical Inference 575

        13.1 Introduction 575

        13.2 U-Statistics 576

        13.3 Some Single-Sample Problems 584

        13.3.1 Goodness-of-Fit Problem 584

        13.3.2 Problem of Location 590

        13.4 Some Two-Sample Problems 599

        13.4.1 Median Test 601

        13.4.2 Kolmogorov–Smirnov Test 602

        13.4.3 The Mann–Whitney–Wilcoxon Test 604

        13.5 Tests of Independence 608

        13.5.1 Chi-square Test of Independence—Contingency Tables 608

        13.5.2 Kendall’s Tau 611

        13.5.3 Spearman’s Rank Correlation Coefficient 614

        13.6 Some Applications of Order Statistics 619

        13.7 Robustness 625

        13.7.1 Effect of Deviations from Model Assumptions on Some Parametric Procedures 625

        13.7.2 Some Robust Procedures 631

        FREQUENTLY USED SYMBOLS AND ABBREVIATIONS 637

        REFERENCES 641

        STATISTICAL TABLES 647

        ANSWERS TO SELECTED PROBLEMS 667

        AUTHOR INDEX 677

        SUBJECT INDEX 679

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