ebook img

Handbook of Applied Economic Statistics PDF

636 Pages·1998·12.86 MB·English
Save to my drive
Quick download
Download
Most books are stored in the elastic cloud where traffic is expensive. For this reason, we have a limit on daily download.

Preview Handbook of Applied Economic Statistics

HANDBOOK OF APPLIED ECONOMIC STATISTICS edited by Aman Ullah University of California Riverside, California David E. A. Giles University of Victoria Victoria, British Columbia, Canada MARCEI MARCELD EKKEIRN,C . NEWY ORK BASEL HONGK ONG DEKKER Library of Congress Cataloging-in-Publication Data Handbook of applied economic statistics/edited by Aman Ullah, David E. A. Giles . p. cm.-(Statistics, textbooks, and monographs; v. 155) Includes bibliographical references and index. ISBN 0-8247-0 129-1 1. Economics-Statistical methods. I. Ullah, Aman. 11. Giles, David E. A. 111. Series. HB137.H36 1998 330 ' .O 1' 5 195-dc2 1 97-47379 CIP This book is printed on acid-free paper. Headquarters Marcel Dekker, Inc. 270 Madison Avenue, New York, NY 10016 tel: 212-696-9000; fax: 212-685-4540 Eastern Hemisphere Distribution Marcel Dekker AG Hutgasse 4, Postfach 812, CH-4001 Basel, Switzerland tel: 44-61-8482; fa: 44-61-261-8896 World Wide Web http://www .dekker.com The publisher offers discounts on this book when ordered in bulk quantities. For more information, write to Special Sdes/Professional Marketing at the address below. Copyright 0 1998 by MARCEL DEKKER, INC. All Rights Reserved. Neither this book nor any part may be reproduced or transmitted in any form or by any means, electronic or mechanical, including photocopying, microfilming, and recording, or by any information storage and retrieval system, without permission in writing from the publisher. Current printing (last digit): 1 0 9 8 7 6 5 4 3 2 1 PRINTED IN THE UNITED STATES OF AMERICA Preface Many applied subjects, including economic statistics, deal with the collection of data, measurement of variables, and the statistical analysis of key relationships and hypotheses. The attempts to analyze economic data go back to the late eighteenth century, when the first examinations of the wages of the poor were done in the United Kingdom, followed by the the mid-nineteenth century research by Engle on food expenditure and income (or total expenditure). These investigations led to the early twentieth-century growth of empirical studies on demand, production, and cost func- tions, price determination, and macroeconomic models. During this period the sta- tistical theory was developed through the seminal works of Legendre, Gauss, and Pearson. Finally, the works of Fisher and Neyman and Pearson laid the foundations of modern statistical inference in the form of classical estimation theory and hypoth- esis testing. These developments in statistical theory, along with the growth of data collections and economic theory, generated a demand for more rigorous research in the metholodogy of economic data analysis and the establishment of the International Statistical Institute and the Econometric Society. The post-World War I1 period saw significant advances in statistical science, and the transformation of economic statistics into a broader subject: econometrics, which is the application of mathematical and statistical methods to the analysis of economic data. During the last four decades, significant works have appeared on econometric techniques of estimation and hypothesis testing, leading to the appli- cation of econometrics not only in economics but also in sociology, psychology, his- tory, political science, and medicine, among others. We also witnessed major de- velopments in the literature associated with the research at the interface between econometrics and statistics, especially in the areas of censored models, panel (lon- gitudinal) data models, the analysis of nonstationary time series, cointegration and volatility, and finite sample and asymptotic theories, among others. These common grounds are of considerable importance for researchers, practitioners, and students of both of these disciplines and are of direct interest to those working in other areas of applied statistics. ... 111 iv PREFACE The most important objective of this volume is to cover the developments in both applied economics statistics and the econometric techniques of estimation and hypothesis testing. It is in this respect that our book differs from other publications in which the emphasis is on econometric methodology. With the above purpose in view, we deal with the material that is of direct interest to researchers, practitioners, and graduate students in many applied fields, especially economics and statistics. It covers reasonably comprehensive and up-to-date reviews of developments in various aspects of economic statistics and econometrics, and also contains papers with new results and scopes for future research. The objective behind all this was to produce a handbook that could be used by professionals in economics, sociology, econometrics, and statistics, and by teachers of graduate courses. The Handbook consists of eighteen chapters that can be broadly classified into the following three groups: 1. Applied Economic Statistics 2. Econometric Methodology and Data Issues 3. Model Specification and Simulation Chapters 1-5 belong to Part 1 and they are applied papers dealing with impor- tant statistical issues in development economics and microeconomics. The chapter by Davies, Green, and Paarsch reviews the literature on using economics statistics, such as income inequality and other aggregate poverty indices, and they make a strong case for the use of disaggregated dominance criteria to make social welfare comparisons. They also discuss some statistical issues related to parametric and non- parametric inference concerning Lorenz Curves, with reference to stochastic dom- inance. In contrast, Kramer’s chapter develops two ways of looking at inequality measurement: the first, a preordering based on majorization defined over income vectors, and the second, an axiomatic-based approach in which axioms are defined over inequality measurements. The chapter also includes the empirical application of inequality measurement primarily focused on dealing with the fact that data is mu- ally grouped by quantile. Ravallion’s chapter addresses an important issue of persis- tence in the geography of poverty. It proposes a methodology for empirically testing the validity of two competing explanations of poverty: an individualistic model and a geographic model. His proposed approach contributes to our understanding of the determinants of poverty and provides information for policymakers regarding which policy interventions are likely to be most effective for its alleviation. The chapter by Deolalikar explores another dimension of the poverty issue in developing countries, that is, whether decreased spending on government health programs will reduce the demand for public health services by the poor and hence will adversely affect the health status of the poor. This question is analyzed using data from research con- ducted in Indonesia. The chapter also attempts to address the shortcomings of the existing literature. Finally, the chapter on mobility by Maasoumi reviews two differ- ent, but related, approaches to testing for income mobility and shows that the two PREFACE v ways converge to the same ordering of states. The relationship between this ordering and the partial ordering given by Lorenz dominance is shown. Chapters 6-10 and 15-17 deal with econometric methodologies related to dif- ferent kinds of data used in empirical research. Chapter 6 by Russell, Breunig and Chiu is perhaps the first comprehensive treatment of the problem of aggregation as it relates to empirical estimation of aggregate relationships. It is well known that the analysis of individual behavior based on aggregate data is justified if the estimated aggregate relationships can be consistently disaggregated to the individual relation- ships and vice versa. Most empirical studies have ignored this problem; those that have not are reviewed in this chapter. Anselin and Bera’s chapter details another data problem ignored in the econometric analysis of regression model: the problem of spatial autocorrelation and the correlation in cross-sectional data. This chapter reviews the methodological issues related to the treatment of spatial dependence in linear models. Another data issue often ignored in empirical development economics and labor economics is related to the fact that most of the survey data is based on complex sampling from a finite population, such as stratified, cluster, and systematic sampling. However, the econometric analysis is carried out under the assumption of random sampling from an infinite population. The chapter by Ullah and Breunig reviews the literature on complex sampling and indicates that the effect of misspec- ifying or ignoring true sampling schemes on the econometric inference can be quite serious. Panel data is the multiple time series observations on the same set of cross- sectional survey units (e.g., households). Baltagi’s chapter reviews the extensive ex- isting literature on econometric inference in linear and nonlinear parametric panel data models. In a related chapter, Ullah and Roy develop the nonparametric kernel estimation of panel data models without assuming their functional forms. The chapter by Golan, Judge, and Miller proposes a maximum-entropy approach to the estimation of simultaneous equations models when the economic data is partially incomplete. In Chapter 15 Terasvirta looks into the modeling of time series data that exhibit non- linear relationships due to discrete or smooth transitions and to regimes’ switching. He proposes and develops a smooth transition regression analysis for such situations. Finally, the chapter by Franses surveys econometric issues concerning seasonality in economic time series data due to weather or other institutional factors. He discusses the statistical models that can describe forecasts of economic time series with sea- sonal variations encountered in macroeconomics, marketing and finance. Chapters 12 and 18 are related to the simulation procedures and 11, 13, and 14 to the model and selection procedures in econometrics. The chapter by DeBene- dictis and Giles surveys the diagnostic tests for the model misspecifications that can have serious consequences on the sampling properties of both estimators and tests. In a related chapter, Hadi and Son look into diagnostic procedures for revealing outliers (influential observations) in the data which, if present, could also affect the estimators and tests. They also propose a methodology of estimating linear models vi PREFACE with outliers, which is an alternative to computer-intensive quantile estimation tech- niques used in practice. Next, the chapter by Dufour and Torrks systematically de- velops the general theory of union-intersection and sample split methods in various specification testing problems in econometrics. They apply their results for testing problems in the SURE model and a model with MA(1) errors. In contrast to the an- alytical approaches of specification testing, the chapter by Veal1 provides a survey of bootstrap simulation procedures that is especially useful in small samples. The book concludes with the chapter by Pagan, in which he debates about the calibra- tion methodology of estimation and specification analysis. Several thought-provoking questions are raised and discussed. In summary, this volume brings together survey material and new methodolog- ical results which are vitally important to modern developments in applied economic statistics and econometrics. The emphasis is on data problems, methodological is- sues, and inferential techniques that arise in practice in a wide range of situations that are frequently encountered by researchers in many related disciplines. Accord- ingly, the contents of the book should have wide appeal and application. We are very pleased with the end product and would like to thank all the authors for their contributions, and for their cooperation during the preparation of this volume. We are also most grateful to Benicia Chatman, University of California at Riverside, for the efficient assistance that she has provided, and to the editorial and production staff at Marcel Dekker, especially Maria Allegra and Lia Pelosi, for their patience, guidance, and expertise. Aman Ullah David E. A. Giles Contents ... Preface LLL Contributors LX Part I Applied Economic Statistics I. Economic Statistics and Social Welfare Comparisons: A Review I James B. Davies, David A. Green, and Harry J. Paarsch 2. Measurement of Inequality 39 Walter Krarner 3. Poor Areas 63 Martin Ravallion 4. The Demand for Health Services in a Developing Country: The Role of Prices, Service Quality, and Reporting of Illnesses 93 Anil B. Deolalikar 5. On Mobility I19 Esfandiar Maasoumi Part 2 Econometric Methodology and Data Issues 6. Aggregation and Econometric Analysis of Demand and Supply I77 R. Robert Russell, Robert I! Breunig, and Chia-Hui Chiu 7. Spatial Dependence in Linear Regression Models with an Introduction to Spatial Econometrics 23 7 Luc Anselin and Anil K. Bera 8. Panel Data Methods 29 I Badi H. Baltagi vii viii CONTENTS 9. Econometric Analysis in Complex Surveys 325 Aman Ullah and Robert I! Breunig 10. Information Recovery in Simultaneous-Equations’ Statistical Models 365 Amos Golan, George Judge, and Douglas Miller I I. Diagnostic Testing in Econometrics: Variable Addition, RESET, and Fourier Approximations 383 Linda DeBenedictis and David E. A. Giles 12. Applications of the Bootstrap in Econometrics and Economic Statistics 419 Michael R. Veal1 13. Detection of Unusual Observations in Regression and Multivariate Data 44 I Ali S. Hadi and Mun S. Son 14. Union-Intersection and Sample-Split Methods in Econometrics with Applications to MA and SURE Models 465 Jean-Marie Dufour and Olivier Torrb Part 3 Model Specification and Simulation I5 . Modeling Economic Relationships with Smooth Transition Regressions 507 Timo Terasvirta 16. Modeling Seasonality in Economic Time Series 553 Philip Ham Frames I7 . Nonparametric and Semiparametric Econometrics of Panel Data 579 Aman Ullah and Nilanjana Roy 18. On Calibration 605 Adrian Rodney Pagan Index 61 9 Contributors Luc Anselin, Ph.D. Research Professor, Regional Research Institute and Depart- ment of Economics, West Virginia University, Morgantown, West Virginia Badi H. Baltagi, Ph.D. Professor, Department of Economics, Texas A&M University, College Station, Texas Anil K. Bera, Ph.D. Professor, Department of Economics, University of Illinois, Champaign, Illinois Robert V. Breunig Graduate Student, Department of Economics, University of Cal- ifornia at Riverside, Riverside, California Chia-Hui Chiu Graduate Student, Department of Economics, University of Cali- fornia at Riverside, Riverside, California James B. Davies, Ph.D. Professor and Chair, Department of Economics, University of Western Ontario, London, Ontario, Canada Linda F. DeBenedictis, M.A. Senior Policy Analyst, Policy and Research Division, Ministry of Human Resources, Victoria, British Columbia, Canada Anil B. Deolalikar, Ph.D. Professor, Department of Economics, University of Wash- ington, Seattle, Washington Jean-Marie Dufour, Ph.D. Professor, C.R.D.E. and Department of Economic Sci- ences, University of Montreal, Montreal, Quebec, Canada Philip Hans Franses, Ph.D. Associate Professor, Department of Econometrics, Eras- mus University Rotterdam, Rotterdam, The Netherlands ix

Description:
Highlighting the interface between applied economics and statistics, this one-of-a-kind resource examines important theoretical issues as well as practical developments in statistical inference related to economic models and analysis. Emphasizing the most recent research in the field, the Handbook o
See more

The list of books you might like

Most books are stored in the elastic cloud where traffic is expensive. For this reason, we have a limit on daily download.