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Structural Vector Autoregressive Analysis
Paperback / softback
Main Details
Title |
Structural Vector Autoregressive Analysis
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Authors and Contributors |
By (author) Lutz Kilian
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By (author) Helmut Lutkepohl
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Series | Themes in Modern Econometrics |
Physical Properties |
Format:Paperback / softback | Pages:754 | Dimensions(mm): Height 227,Width 151 |
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Category/Genre | Econometrics |
ISBN/Barcode |
9781316647332
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Classifications | Dewey:330.015195 |
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Audience | Tertiary Education (US: College) | |
Illustrations |
Worked examples or Exercises; 40 Line drawings, black and white
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Publishing Details |
Publisher |
Cambridge University Press
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Imprint |
Cambridge University Press
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Publication Date |
23 November 2017 |
Publication Country |
United Kingdom
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Description
Structural vector autoregressive (VAR) models are important tools for empirical work in macroeconomics, finance, and related fields. This book not only reviews the many alternative structural VAR approaches discussed in the literature, but also highlights their pros and cons in practice. It provides guidance to empirical researchers as to the most appropriate modeling choices, methods of estimating, and evaluating structural VAR models. The book traces the evolution of the structural VAR methodology and contrasts it with other common methodologies, including dynamic stochastic general equilibrium (DSGE) models. It is intended as a bridge between the often quite technical econometric literature on structural VAR modeling and the needs of empirical researchers. The focus is not on providing the most rigorous theoretical arguments, but on enhancing the reader's understanding of the methods in question and their assumptions. Empirical examples are provided for illustration.
Author Biography
Lutz Kilian is Professor of Economics at the University of Michigan, Ann Arbor. Between 2001 and 2003 he served as an adviser to the European Central Bank in Frankfurt am Main, Germany. Professor Kilian has been a research visitor at the Federal Reserve Board, the Bank of Canada, the European Central Bank, and the International Monetary Fund. His work has appeared in Econometrica, the American Economic Review, and the Journal of Political Economy. He has served as associate editor of the Journal of Business and Economic Statistics, among other journals. Helmut Lutkepohl has held professorial positions at Universitat Hamburg, the Christian-Albrechts-Universitat zu Kiel, Germany, the Humboldt-Universitat zu Berlin, the European University Institute, Florence, and the Freie Universitat Berlin. He has served as Dean of the Graduate Center of the Deutsches Institut fur Wirtschaftsforschung, Berlin. He has published professional articles in Econometrica, the Journal of Econometrics, the Journal of Business and Economic Statistics, Econometric Theory, and the Journal of Applied Econometrics. He has also served as associate editor of the Journal of Econometrics, Econometric Theory, Macroeconomic Dynamics, the Journal of Applied Econometrics, and Econometric Reviews. He is the author of New Introduction to Multiple Time Series Analysis (2010).
Reviews'The book by Kilian and Lutkepohl will become the new benchmark textbook for teaching structural vector autoregressive analysis. This book thus devotes considerable space to the issue of identification, including sign restrictions, to Bayesian methods, to Factor Vector Autoregressions and to non-fundamental shocks. These are key to understanding much of recent research. The authors do an excellent job of assembling and lucidly explaining it all. This book is destined to become a classic.' Harald Uhlig, University of Chicago 'Structural vector autoregressions (SVARs) are an essential tool in empirical macroeconomics. This book provides a thorough and long-overdue digest of a literature that has been thriving for over 35 years and seen a lot of exciting developments in the past decade. The authors masterfully blend theoretical foundations, guidance for practitioners, and detailed empirical applications. This is a must-read for anyone working with SVARs.' Frank Schorfheide, University of Pennsylvania
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