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统计模型:理论和实践(英文版•第2版)

  • 作者:弗里德曼
  • 出版社:机械工业出版社
  • ISBN:9787111317975
  • 出版日期:2010年09月01日
  • 页数:442
  • 定价:¥38.00
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    内容提要
    《统计模型:理论和实践(英文版·第2版)》内容简介:Some books are correct. Some are clear. Some are useful. Some are entertaining. Few are even two of these. This book is all four. Statistical Models: Theory and Practice is lucid, candid and insightful, a joy to read. We are fortunate that David Freedman finished this new edition before his death in late 2008. We are deeply saddened by his passing, and we greatly admire the energy and cheer he brought to this volume——and many other projects——-during his final months.
    目录
    Table of Contents
    Foreword to the Revised Edition iii
    Preface v
    1 Observational Studies and Experiments
    1.1 Introduction 1
    1.2 The HIP trial 4
    1.3 Snow on cholera 6
    1.4 Yule on the causes of poverty 9
    Exercise set A 13
    1.5 End notes 14

    2 The Regression Line
    2.1 Introduction 18
    2.2 The regression line 18
    2.3 Hooke's law 22
    Exercise set A 23
    2.4 Complexities 23
    2.5 Simple vs multiple regression 26
    Exercise set B 26
    2.6 End notes 28

    3 Matrix Algebra
    3.1 Introduction 29
    Exercise set A 30
    3.2 Determinants and inverses 31
    Exercise set B 33
    3.3 Random vectors 35
    Exercise set C 35
    3.4 Positive definite matrices 36
    Exercise set D 37
    3.5 The normal distribution 38
    Exercise set E 39
    3.6 If you want a book on matrix algebra 40

    4 Multiple Regression
    4.1 Introduction 41
    Exercise set A 44
    4.2 Standard errors 45
    Things we don't need 49
    Exercise set B 49
    4.3 Explained variance in multiple regression 51
    Association or causation? 53
    Exercise set C 53
    4.4 What happens to OLS if the assumptions break down? 53
    4.5 Discussion questions 53
    4.6 End notes 59

    5 Multiple Regression: Special Topics
    5.1 Introduction 61
    5.20LSisBLUE 61
    Exercise set A 63
    5.3 Generalized least squares 63
    Exercise set B 65
    5.4 Examples on GLS 65
    Exercise set C 66
    5.5 What happens to GLS if the assumptions break down? 68
    5.6 Normal theory 68
    Statistical significance 70
    Exercise set D 71
    5.7 The F-test 72
    "The" F-test in applied work 73
    Exercise set E 74
    5.8 Data snooping 74
    Exercise set F 76
    5.9 Discussion questions 76
    5.10 End notes 78

    6 Path Models
    6.1 Stratification 81
    Exercise set A 86
    6.2 Hooke's law revisited 87
    Exercise set B 88
    6.3 Political repression during the McCarthy era 88
    Exercise set C 90
    TABLE OF CONTENTS
    6.4 Inferring causation by regression 91
    Exercise set D 93
    6.5 Response schedules for path diagrams 94
    Selection vs intervention 101
    Structural equations and stable parameters 101
    Ambiguity in notation 102
    Exercise set E 102
    6.6 Dummy variables 103
    Types of variables 104
    6.7 Discussion questions 105
    6.8 End notes 112

    7 Maximum Likelihood
    7.1 Introduction 115
    Exercise set A 119
    7.2 Probit models 121
    Why not regression? 123
    The latent-variable formulation 123
    Exercise set B 124
    Identification vs estimation 125
    What if the Ui are N(/z, tr2)? 126
    Exercise set C 127
    7.3 Logit models 128
    Exercise set D 128
    7.4 The effect of Catholic schools 130
    Latent variables 132
    Response schedules 133
    The second equation 134
    Mechanics: bivariate probit 136
    Why a model rather than a cross-tab? 138
    Interactions 138
    More on table 3 in Evans and Schwab 139
    More on the second equation 139
    Exercise set E 140
    7.5 Discussion questions 141
    7.6 End notes 150
    8 The Bootstrap
    8.1 Introduction 155
    Exercise set A 166
    8.2 Bootstrapping a model for energy demand 167
    Exercise set B 173
    8.3 End notes 174

    9 Simultaneous Equations
    9.1 Introduction 176
    Exercise set A 181
    9.2 Instrumental variables 181
    Exercise set B 184
    9.3 Estimating the butter model 184
    Exercise set C 185
    9.4 What are the two stages? 186
    Invariance assumptions 187
    9.5 A social-science example: education and fertility 187
    More on Rindfuss et al 191
    9.6 Covariates 192
    9.7 Linear probability models 193
    The assumptions 194
    The questions 195
    Exercise set D 196
    9.8 More on IVLS 197
    Some technical issues 197
    Exercise set E 198
    Simulations to illustrate IVLS 199
    9.9 Discussion questions 200
    9.10 End notes 207

    10 Issues in Statistical Modeling
    10.1 Introduction 209
    The bootstrap 211
    The role of asymptotics 211
    Philosophers' stones 211
    The modelers' response 212
    10.2 Critical literature 212
    10.3 Response schedules 217
    10.4 Evaluating the models in chapters 7-9 217
    10.5 Summing up 218
    References 219
    Answers to Exercises 235
    TABLE OF CONTENTS
    The Computer Labs 294
    Appendix: Sample MATLAB Code 310
    Reprints
    Gibson on McCarthy 315
    Evans and Schwab on Catholic Schools 343
    Rindfuss et al on Education and Fertility 377
    Schneider et al on Social Capital 402
    Index 431

    与描述相符

    100

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