Description

Book Synopsis


Table of Contents

1. Introduction

1.1 An Overview

1.2 Some Examples

1.3 A Brief History

1.4 A Chapter Summary

2. Probability

2.1 Introduction

2.2 Sample Spaces and the Algebra of Sets

2.3 The Probability Function

2.4 Conditional Probability

2.5 Independence

2.6 Combinatorics

2.7 Combinatorial Probability

2.8 Taking a Second Look at Statistics (Monte Carlo Techniques)

3. Random Variables

3.1 Introduction

3.2 Binomial and Hypergeometric Probabilities

3.3 Discrete Random Variables

3.4 Continuous Random Variables

3.5 Expected Values

3.6 The Variance

3.7 Joint Densities

3.8 Transforming and Combining Random Variables

3.9 Further Properties of the Mean and Variance

3.10 Order Statistics

3.11 Conditional Densities

3.12 Moment-Generating Functions

3.13 Taking a Second Look at Statistics (Interpreting Means)

Appendix 3.A.1 MINITAB Applications

4. Special Distributions

4.1 Introduction

4.2 The Poisson Distribution

4.3 The Normal Distribution

4.4 The Geometric Distribution

4.5 The Negative Binomial Distribution

4.6 The Gamma Distribution

4.7 Taking a Second Look at Statistics (Monte Carlo Simulations)

Appendix 4.A.1 MINITAB Applications

Appendix 4.A.2 A Proof of the Central Limit Theorem

5. Estimation

5.1 Introduction

5.2 Estimating Parameters: The Method of Maximum Likelihood and the Method of Moments

5.3 Interval Estimation

5.4 Properties of Estimators

5.5 Minimum-Variance Estimators: The Cramér-Rao Lower Bound

5.6 Sufficient Estimators

5.7 Consistency

5.8 Bayesian Estimation

5.9 Taking A Second Look at Statistics (Beyond Classical Estimation)

Appendix 5.A.1 MINITAB Applications

6. Hypothesis Testing

6.1 Introduction

6.2 The Decision Rule

6.3 Testing Binomial Data–H0: p = po

6.4 Type I and Type II Errors

6.5 A Notion of Optimality: The Generalized Likelihood Ratio

6.6 Taking a Second Look at Statistics (Statistical Significance versus “Practical” Significance)

7. Inferences Based on the Normal Distribution

7.1 Introduction

7.2 Comparing Y-µ s/ vn and Y-µ S/ vn

7.3 Deriving the Distribution of Y-µ S/ vn

7.4 Drawing Inferences About µ

7.5 Drawing Inferences About s2

7.6 Taking a Second Look at Statistics (Type II Error)

Appendix 7.A.1 MINITAB Applications

Appendix 7.A.2 Some Distribution Results for Y and S2

Appendix 7.A.3 A Proof that the One-Sample t Test is a GLRT

Appendix 7.A.4 A Proof of Theorem 7.5.2

8. Types of Data: A Brief Overview

8.1 Introduction

8.2 Classifying Data

8.3 Taking a Second Look at Statistics (Samples Are Not “Valid”!)

9. Two-Sample Inferences

9.1 Introduction

9.2 Testing H0: µX =µY

9.3 Testing H0: s2X=s2Y–The F Test

9.4 Binomial Data: Testing H0: pX = pY

9.5 Confidence Intervals for the Two-Sample Problem

9.6 Taking a Second Look at Statistics (Choosing Samples)

Appendix 9.A.1 A Derivation of the Two-Sample t Test (A Proof of Theorem 9.2.2)

Appendix 9.A.2 MINITAB Applications

10. Goodness-of-Fit Tests

10.1 Introduction

10.2 The Multinomial Distribution

10.3 Goodness-of-Fit Tests: A

Introduction to Mathematical Statistics and Its

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    A Paperback by Richard J. Larsen, Morris Marx

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      View other formats and editions of Introduction to Mathematical Statistics and Its by Richard J. Larsen

      Publisher: Pearson Education
      Publication Date: 8/5/2013 12:00:00 AM
      ISBN13: 9781292023557, 978-1292023557
      ISBN10: 1292023554

      Description

      Book Synopsis


      Table of Contents

      1. Introduction

      1.1 An Overview

      1.2 Some Examples

      1.3 A Brief History

      1.4 A Chapter Summary

      2. Probability

      2.1 Introduction

      2.2 Sample Spaces and the Algebra of Sets

      2.3 The Probability Function

      2.4 Conditional Probability

      2.5 Independence

      2.6 Combinatorics

      2.7 Combinatorial Probability

      2.8 Taking a Second Look at Statistics (Monte Carlo Techniques)

      3. Random Variables

      3.1 Introduction

      3.2 Binomial and Hypergeometric Probabilities

      3.3 Discrete Random Variables

      3.4 Continuous Random Variables

      3.5 Expected Values

      3.6 The Variance

      3.7 Joint Densities

      3.8 Transforming and Combining Random Variables

      3.9 Further Properties of the Mean and Variance

      3.10 Order Statistics

      3.11 Conditional Densities

      3.12 Moment-Generating Functions

      3.13 Taking a Second Look at Statistics (Interpreting Means)

      Appendix 3.A.1 MINITAB Applications

      4. Special Distributions

      4.1 Introduction

      4.2 The Poisson Distribution

      4.3 The Normal Distribution

      4.4 The Geometric Distribution

      4.5 The Negative Binomial Distribution

      4.6 The Gamma Distribution

      4.7 Taking a Second Look at Statistics (Monte Carlo Simulations)

      Appendix 4.A.1 MINITAB Applications

      Appendix 4.A.2 A Proof of the Central Limit Theorem

      5. Estimation

      5.1 Introduction

      5.2 Estimating Parameters: The Method of Maximum Likelihood and the Method of Moments

      5.3 Interval Estimation

      5.4 Properties of Estimators

      5.5 Minimum-Variance Estimators: The Cramér-Rao Lower Bound

      5.6 Sufficient Estimators

      5.7 Consistency

      5.8 Bayesian Estimation

      5.9 Taking A Second Look at Statistics (Beyond Classical Estimation)

      Appendix 5.A.1 MINITAB Applications

      6. Hypothesis Testing

      6.1 Introduction

      6.2 The Decision Rule

      6.3 Testing Binomial Data–H0: p = po

      6.4 Type I and Type II Errors

      6.5 A Notion of Optimality: The Generalized Likelihood Ratio

      6.6 Taking a Second Look at Statistics (Statistical Significance versus “Practical” Significance)

      7. Inferences Based on the Normal Distribution

      7.1 Introduction

      7.2 Comparing Y-µ s/ vn and Y-µ S/ vn

      7.3 Deriving the Distribution of Y-µ S/ vn

      7.4 Drawing Inferences About µ

      7.5 Drawing Inferences About s2

      7.6 Taking a Second Look at Statistics (Type II Error)

      Appendix 7.A.1 MINITAB Applications

      Appendix 7.A.2 Some Distribution Results for Y and S2

      Appendix 7.A.3 A Proof that the One-Sample t Test is a GLRT

      Appendix 7.A.4 A Proof of Theorem 7.5.2

      8. Types of Data: A Brief Overview

      8.1 Introduction

      8.2 Classifying Data

      8.3 Taking a Second Look at Statistics (Samples Are Not “Valid”!)

      9. Two-Sample Inferences

      9.1 Introduction

      9.2 Testing H0: µX =µY

      9.3 Testing H0: s2X=s2Y–The F Test

      9.4 Binomial Data: Testing H0: pX = pY

      9.5 Confidence Intervals for the Two-Sample Problem

      9.6 Taking a Second Look at Statistics (Choosing Samples)

      Appendix 9.A.1 A Derivation of the Two-Sample t Test (A Proof of Theorem 9.2.2)

      Appendix 9.A.2 MINITAB Applications

      10. Goodness-of-Fit Tests

      10.1 Introduction

      10.2 The Multinomial Distribution

      10.3 Goodness-of-Fit Tests: A

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