
Statistical foundations of econometric modelling
Başlık:
Statistical foundations of econometric modelling
Yazar:
Spanos, Aris, 1952-
ISBN:
9780521262859
9780521269124
Ek Yazar:
Yayım Bilgisi:
Cambridge ; New York : Cambridge University Press, 1986.
Fiziksel Tanım:
xxiii, 695 pages : illustrations ; 24 cm
Mevcut:*
Library | Materyal Türü | Barkod | Yer Numarası | Durum |
|---|---|---|---|---|
Searching... Pamukkale Merkez Kütüphanesi | Kitap | 0104236 | HB141 S64 1986 | Searching... Unknown |
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Özet
Özet
This textbook provides an introduction to econometrics through a grounding in probability theory and statistical inference. The emphasis is on the concepts and ideas underlying probability theory and statistical inference, and on motivating the learning of them both at a formal and an intuitive level. It encourages the mastering of fundamental concepts and theoretical perspectives which guide the formulation and solution of problems in econometric modelling. This makes it an ideal introduction to empirical econometric modelling and the more advanced econometric literature. It is recommended for use on courses giving students a thorough grounding in econometrics at undergraduate or graduate level.
Table of Contents
| Foreword | p. xi |
| Preface | p. xv |
| Acknowledgements | p. xx |
| List of symbols and abbreviations | p. xxi |
| Part I Introduction | |
| 1 Econometric modelling, a preliminary view | p. 3 |
| 1.1 Econometrics--a brief historical overview | p. 3 |
| 1.2 Econometric modelling--a sketch of a methodology | p. 15 |
| 1.3 Looking ahead | p. 22 |
| 2 Descriptive study of data | p. 23 |
| 2.1 Histograms and their numerical characteristics | p. 23 |
| 2.2 Frequency curves | p. 27 |
| 2.3 Looking ahead | p. 29 |
| Part II Probability theory | |
| 3 Probability | p. 33 |
| 3.1 The notion of probability | p. 34 |
| 3.2 The axiomatic approach | p. 37 |
| 3.3 Conditional probability | p. 43 |
| 4 Random variables and probability distributions | p. 47 |
| 4.1 The concept of a random variable | p. 48 |
| 4.2 The distribution and density functions | p. 55 |
| 4.3 The notion of a probability model | p. 60 |
| 4.4 Some univariate distributions | p. 62 |
| 4.5 Numerical characteristics of random variables | p. 68 |
| 5 Random vectors and their distributions | p. 78 |
| 5.1 Joint distribution and density functions | p. 78 |
| 5.2 Some bivariate distributions | p. 83 |
| 5.3 Marginal distributions | p. 85 |
| 5.4 Conditional distributions | p. 89 |
| 6 Functions of random variables | p. 96 |
| 6.1 Functions of one random variable | p. 96 |
| 6.2 Functions of several random variables | p. 99 |
| 6.3 Functions of normally distributed random variables, a summary | p. 108 |
| 6.4 Looking ahead | p. 109 |
| Appendix 6.1 The normal and related distributions | p. 110 |
| 7 The general notion of expectation | p. 116 |
| 7.1 Expectation of a function of random variables | p. 116 |
| 7.2 Conditional expectation | p. 121 |
| 7.3 Looking ahead | p. 127 |
| Appendix 7.1 Inequalities | p. 129 |
| 8 Stochastic processes | p. 130 |
| 8.1 The concept of a stochastic process | p. 131 |
| 8.2 Restricting the time-heterogeneity of a stochastic process | p. 137 |
| 8.3 Restricting the memory of a stochastic process | p. 140 |
| 8.4 Some special stochastic processes | p. 144 |
| 8.5 Summary | p. 162 |
| 9 Limit theorems | p. 165 |
| 9.1 The early limit theorems | p. 165 |
| 9.2 The law of large numbers | p. 168 |
| 9.3 The central limit theorem | p. 173 |
| 9.4 Limit theorems for stochastic processes | p. 178 |
| 9.5 Summary | p. 180 |
| 10 Introduction to asymptotic theory | p. 183 |
| 10.1 Introduction | p. 183 |
| 10.2 Modes of convergence | p. 185 |
| 10.3 Convergence of moments | p. 192 |
| 10.4 The 'big O' and 'little o' notation | p. 194 |
| 10.5 Extending the limit theorems | p. 198 |
| 10.6 Error bounds and asymptotic expansions | p. 202 |
| Part III Statistical inference | |
| 11 The nature of statistical inference | p. 213 |
| 11.1 Introduction | p. 213 |
| 11.2 The sampling model | p. 215 |
| 11.3 The frequency approach | p. 219 |
| 11.4 An overview of statistical inference | p. 221 |
| 11.5 Statistics and their distributions | p. 223 |
| Appendix 11.1 The empirical distribution function | p. 228 |
| 12 Estimation I--properties of estimators | p. 231 |
| 12.1 Finite sample properties | p. 232 |
| 12.2 Asymptotic properties | p. 244 |
| 12.3 Predictors and their properties | p. 247 |
| 13 Estimation II--methods | p. 252 |
| 13.1 The method of least-squares | p. 253 |
| 13.2 The method of moments | p. 256 |
| 13.3 The maximum likelihood method | p. 257 |
| 14 Hypothesis testing and confidence regions | p. 285 |
| 14.1 Testing, definitions and concepts | p. 285 |
| 14.2 Optimal tests | p. 290 |
| 14.3 Constructing optimal tests | p. 296 |
| 14.4 The likelihood ratio test procedure | p. 299 |
| 14.5 Confidence estimation | p. 303 |
| 14.6 Prediction | p. 306 |
| 15 The multivariate normal distribution | p. 312 |
| 15.1 Multivariate distributions | p. 312 |
| 15.2 The multivariate normal distribution | p. 315 |
| 15.3 Quadratic forms related to the normal distribution | p. 319 |
| 15.4 Estimation | p. 320 |
| 15.5 Hypothesis testing and confidence regions | p. 323 |
| 16 Asymptotic test procedures | p. 326 |
| 16.1 Asymptotic properties | p. 326 |
| 16.2 The likelihood ratio and related test procedures | p. 328 |
| Part IV The linear regression and related statistical models | |
| 17 Statistical models in econometrics | p. 339 |
| 17.1 Simple statistical models | p. 339 |
| 17.2 Economic data and the sampling model | p. 342 |
| 17.3 Economic data and the probability model | p. 346 |
| 17.4 The statistical generating mechanism | p. 349 |
| 17.5 Looking ahead | p. 352 |
| Appendix 17.1 Data | p. 355 |
| 18 The Gauss linear model | p. 357 |
| 18.1 Specification | p. 357 |
| 18.2 Estimation | p. 359 |
| 18.3 Hypothesis testing and confidence intervals | p. 363 |
| 18.4 Experimental design | p. 366 |
| 18.5 Looking ahead | p. 367 |
| 19 The linear regression model I--specification, estimation and testing | p. 369 |
| 19.1 Introduction | p. 369 |
| 19.2 Specification | p. 370 |
| 19.3 Discussion of the assumptions | p. 375 |
| 19.4 Estimation | p. 378 |
| 19.5 Specification testing | p. 392 |
| 19.6 Prediction | p. 402 |
| 19.7 The residuals | p. 405 |
| 19.8 Summary and conclusion | p. 408 |
| Appendix 19.1 A note on measurement systems | p. 409 |
| 20 The linear regression model II--departures from the assumptions underlying the statistical GM | p. 412 |
| 20.1 The stochastic linear regression model | p. 413 |
| 20.2 The statistical parameters of interest | p. 418 |
| 20.3 Weak exogeneity | p. 421 |
| 20.4 Restrictions on the statistical parameters of interest | p. 422 |
| 20.5 Collinearity | p. 432 |
| 20.6 'Near' collinearity | p. 434 |
| 21 The linear regression model III--departures from the assumptions underlying the probability model | p. 443 |
| 21.1 Misspecification testing and auxiliary regressions | p. 443 |
| 21.2 Normality | p. 447 |
| 21.3 Linearity | p. 457 |
| 21.4 Homoskedasticity | p. 463 |
| 21.5 Parameter time invariance | p. 472 |
| 21.6 Parameter structural change | p. 481 |
| Appendix 21.1 Variance stabilising transformations | p. 487 |
| 22 The linear regression model IV--departures from the sampling model assumption | p. 493 |
| 22.1 Implications of a non-random sample | p. 494 |
| 22.2 Tackling temporal dependence | p. 503 |
| 22.3 Testing the independent sample assumption | p. 511 |
| 22.4 Looking back | p. 521 |
| Appendix 22.1 Deriving the conditional expectation | p. 523 |
| 23 The dynamic linear regression model | p. 526 |
| 23.1 Specification | p. 527 |
| 23.2 Estimation | p. 533 |
| 23.3 Misspecification testing | p. 539 |
| 23.4 Specification testing | p. 548 |
| 23.5 Prediction | p. 562 |
| 23.6 Looking back | p. 567 |
| 24 The multivariate linear regression model | p. 571 |
| 24.1 Introduction | p. 571 |
| 24.2 Specification and estimation | p. 574 |
| 24.3 A priori information | p. 579 |
| 24.4 The Zellner and Malinvaud formulations | p. 585 |
| 24.5 Specification testing | p. 589 |
| 24.6 Misspecification testing | p. 596 |
| 24.7 Prediction | p. 599 |
| 24.8 The multivariate dynamic linear regression (MDLR) model | p. 599 |
| Appendix 24.1 The Wishart distribution | p. 602 |
| Appendix 24.2 Kronecker products and matrix differentiation | p. 603 |
| 25 The simultaneous equations model | p. 608 |
| 25.1 Introduction | p. 608 |
| 25.2 The multivariate linear regression and simultaneous equations models | p. 610 |
| 25.3 Identification using linear homogeneous restrictions | p. 614 |
| 25.4 Specification | p. 619 |
| 25.5 Maximum likelihood estimation | p. 621 |
| 25.6 Least-squares estimation | p. 626 |
| 25.7 Instrumental variables | p. 637 |
| 25.8 Misspecification testing | p. 644 |
| 25.9 Specification testing | p. 649 |
| 25.10 Prediction | p. 654 |
| 26 Epilogue: towards a methodology of econometric modelling | p. 659 |
| 26.1 A methodologist's critical eye | p. 659 |
| 26.2 Econometric modelling, formalising a methodology | p. 661 |
| 26.3 Conclusion | p. 671 |
| References | p. 673 |
| Index | p. 689 |
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