Description

Book Synopsis
A GUIDE TO ECONOMICS, STATISTICS AND FINANCE THAT EXPLORES THE MATHEMATICAL FOUNDATIONS UNDERLING ECONOMETRIC METHODS An Introduction to Econometric Theory offers a text to help in the mastery of the mathematics that underlie econometric methods and includes a detailed study of matrix algebra and distribution theory. Designed to be an accessible resource, the text explains in clear language why things are being done, and how previous material informs a current argument. The style is deliberately informal with numbered theorems and lemmas avoided. However, very few technical results are quoted without some form of explanation, demonstration or proof. The authora noted expert in the fieldcovers a wealth of topics including: simple regression, basic matrix algebra, the general linear model, distribution theory, the normal distribution, properties of least squares, unbiasedness and efficiency, eigenvalues, statistical inference in regression, t and F tests, the partitioned regression, s

Table of Contents

List of Figures ix

Preface xi

About the CompanionWebsite xv

Part I Fitting 1

1 Elementary Data Analysis 3

1.1 Variables and Observations 3

1.2 Summary Statistics 4

1.3 Correlation 6

1.4 Regression 10

1.5 Computing the Regression Line 12

1.6 Multiple Regression 16

1.7 Exercises 18

2 Matrix Representation 21

2.1 Systems of Equations 21

2.2 Matrix Algebra Basics 23

2.3 Rules of Matrix Algebra 26

2.4 Partitioned Matrices 27

2.5 Exercises 28

3 Solving the Matrix Equation 31

3.1 Matrix Inversion 31

3.2 Determinant and Adjoint 34

3.3 Transposes and Products 37

3.4 Cramer’s Rule 38

3.5 Partitioning and Inversion 39

3.6 A Note on Computation 41

3.7 Exercises 43

4 The Least Squares Solution 47

4.1 Linear Dependence and Rank 47

4.2 The General Linear Regression 50

4.3 Definite Matrices 52

4.4 Matrix Calculus 56

4.5 Goodness of Fit 57

4.6 Exercises 59

Part II Modelling 63

5 Probability Distributions 65

5.1 A Random Experiment 65

5.2 Properties of the Normal Distribution 68

5.3 Expected Values 72

5.4 Discrete Random Variables 75

5.5 Exercises 80

6 More on Distributions 83

6.1 Random Vectors 83

6.2 The Multivariate Normal Distribution 84

6.3 Other Continuous Distributions 87

6.4 Moments 90

6.5 Conditional Distributions 92

6.6 Exercises 94

7 The Classical RegressionModel 97

7.1 The Classical Assumptions 97

7.2 The Model 99

7.3 Properties of Least Squares 101

7.4 The Projection Matrices 103

7.5 The Trace 104

7.6 Exercises 106

8 The Gauss-Markov Theorem 109

8.1 A Simple Example 109

8.2 Efficiency in the General Model 111

8.3 Failure of the Assumptions 113

8.4 Generalized Least Squares 114

8.5 Weighted Least Squares 116

8.6 Exercises 118

Part III Testing 121

9 Eigenvalues and Eigenvectors 123

9.1 The Characteristic Equation 123

9.2 Complex Roots 124

9.3 Eigenvectors 126

9.4 Diagonalization 128

9.5 Other Properties 130

9.6 An Interesting Result 131

9.7 Exercises 133

10 The Gaussian RegressionModel 135

10.1 Testing Hypotheses 135

10.2 Idempotent Quadratic Forms 137

10.3 Confidence Regions 140

10.4 t Statistics 141

10.5 Tests of Linear Restrictions 144

10.6 Constrained Least Squares 146

10.7 Exercises 149

11 Partitioning and Specification 153

11.1 The Partitioned Regression 153

11.2 Frisch-Waugh-Lovell Theorem 155

11.3 Misspecification Analysis 156

11.4 Specification Testing 159

11.5 Stability Analysis 160

11.6 Prediction Tests 162

11.7 Exercises 163

Part IV Extensions 167

12 Random Regressors 169

12.1 Conditional Probability 169

12.2 Conditional Expectations 170

12.3 StatisticalModels Contrasted 174

12.4 The Statistical Assumptions 176

12.5 Properties of OLS 178

12.6 The Gaussian Model 182

12.7 Exercises 183

13 Introduction to Asymptotics 187

13.1 The Lawof Large Numbers 187

13.2 Consistent Estimation 192

13.3 The Central LimitTheorem 195

13.4 Asymptotic Normality 198

13.5 Multiple Regression 201

13.6 Exercises 203

14 Asymptotic Estimation Theory 207

14.1 Large Sample Efficiency 207

14.2 Instrumental Variables 208

14.3 Maximum Likelihood 210

14.4 Gaussian ML 213

14.5 Properties of ML Estimators 214

14.6 Likelihood Inference 216

14.7 Exercises 218

Part V Appendices 221

A The Binomial Coefficients 223

B The Exponential Function 225

C Essential Calculus 227

D The Generalized Inverse 229

Recommended Reading 233

Index 235

An Introduction to Econometric Theory

    Product form

    £66.45

    Includes FREE delivery

    RRP £69.95 – you save £3.50 (5%)

    Order before 4pm today for delivery by Mon 6 Jul 2026.

    A Hardback by James Davidson

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of An Introduction to Econometric Theory by James Davidson

      Publisher: John Wiley & Sons Inc
      Publication Date: 05/10/2018
      ISBN13: 9781119484882, 978-1119484882
      ISBN10: 111948488X

      Description

      Book Synopsis
      A GUIDE TO ECONOMICS, STATISTICS AND FINANCE THAT EXPLORES THE MATHEMATICAL FOUNDATIONS UNDERLING ECONOMETRIC METHODS An Introduction to Econometric Theory offers a text to help in the mastery of the mathematics that underlie econometric methods and includes a detailed study of matrix algebra and distribution theory. Designed to be an accessible resource, the text explains in clear language why things are being done, and how previous material informs a current argument. The style is deliberately informal with numbered theorems and lemmas avoided. However, very few technical results are quoted without some form of explanation, demonstration or proof. The authora noted expert in the fieldcovers a wealth of topics including: simple regression, basic matrix algebra, the general linear model, distribution theory, the normal distribution, properties of least squares, unbiasedness and efficiency, eigenvalues, statistical inference in regression, t and F tests, the partitioned regression, s

      Table of Contents

      List of Figures ix

      Preface xi

      About the CompanionWebsite xv

      Part I Fitting 1

      1 Elementary Data Analysis 3

      1.1 Variables and Observations 3

      1.2 Summary Statistics 4

      1.3 Correlation 6

      1.4 Regression 10

      1.5 Computing the Regression Line 12

      1.6 Multiple Regression 16

      1.7 Exercises 18

      2 Matrix Representation 21

      2.1 Systems of Equations 21

      2.2 Matrix Algebra Basics 23

      2.3 Rules of Matrix Algebra 26

      2.4 Partitioned Matrices 27

      2.5 Exercises 28

      3 Solving the Matrix Equation 31

      3.1 Matrix Inversion 31

      3.2 Determinant and Adjoint 34

      3.3 Transposes and Products 37

      3.4 Cramer’s Rule 38

      3.5 Partitioning and Inversion 39

      3.6 A Note on Computation 41

      3.7 Exercises 43

      4 The Least Squares Solution 47

      4.1 Linear Dependence and Rank 47

      4.2 The General Linear Regression 50

      4.3 Definite Matrices 52

      4.4 Matrix Calculus 56

      4.5 Goodness of Fit 57

      4.6 Exercises 59

      Part II Modelling 63

      5 Probability Distributions 65

      5.1 A Random Experiment 65

      5.2 Properties of the Normal Distribution 68

      5.3 Expected Values 72

      5.4 Discrete Random Variables 75

      5.5 Exercises 80

      6 More on Distributions 83

      6.1 Random Vectors 83

      6.2 The Multivariate Normal Distribution 84

      6.3 Other Continuous Distributions 87

      6.4 Moments 90

      6.5 Conditional Distributions 92

      6.6 Exercises 94

      7 The Classical RegressionModel 97

      7.1 The Classical Assumptions 97

      7.2 The Model 99

      7.3 Properties of Least Squares 101

      7.4 The Projection Matrices 103

      7.5 The Trace 104

      7.6 Exercises 106

      8 The Gauss-Markov Theorem 109

      8.1 A Simple Example 109

      8.2 Efficiency in the General Model 111

      8.3 Failure of the Assumptions 113

      8.4 Generalized Least Squares 114

      8.5 Weighted Least Squares 116

      8.6 Exercises 118

      Part III Testing 121

      9 Eigenvalues and Eigenvectors 123

      9.1 The Characteristic Equation 123

      9.2 Complex Roots 124

      9.3 Eigenvectors 126

      9.4 Diagonalization 128

      9.5 Other Properties 130

      9.6 An Interesting Result 131

      9.7 Exercises 133

      10 The Gaussian RegressionModel 135

      10.1 Testing Hypotheses 135

      10.2 Idempotent Quadratic Forms 137

      10.3 Confidence Regions 140

      10.4 t Statistics 141

      10.5 Tests of Linear Restrictions 144

      10.6 Constrained Least Squares 146

      10.7 Exercises 149

      11 Partitioning and Specification 153

      11.1 The Partitioned Regression 153

      11.2 Frisch-Waugh-Lovell Theorem 155

      11.3 Misspecification Analysis 156

      11.4 Specification Testing 159

      11.5 Stability Analysis 160

      11.6 Prediction Tests 162

      11.7 Exercises 163

      Part IV Extensions 167

      12 Random Regressors 169

      12.1 Conditional Probability 169

      12.2 Conditional Expectations 170

      12.3 StatisticalModels Contrasted 174

      12.4 The Statistical Assumptions 176

      12.5 Properties of OLS 178

      12.6 The Gaussian Model 182

      12.7 Exercises 183

      13 Introduction to Asymptotics 187

      13.1 The Lawof Large Numbers 187

      13.2 Consistent Estimation 192

      13.3 The Central LimitTheorem 195

      13.4 Asymptotic Normality 198

      13.5 Multiple Regression 201

      13.6 Exercises 203

      14 Asymptotic Estimation Theory 207

      14.1 Large Sample Efficiency 207

      14.2 Instrumental Variables 208

      14.3 Maximum Likelihood 210

      14.4 Gaussian ML 213

      14.5 Properties of ML Estimators 214

      14.6 Likelihood Inference 216

      14.7 Exercises 218

      Part V Appendices 221

      A The Binomial Coefficients 223

      B The Exponential Function 225

      C Essential Calculus 227

      D The Generalized Inverse 229

      Recommended Reading 233

      Index 235

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account