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008 140116s2013 enk o 010 0 eng d
020 _a9781781907535 (electronic bk.) :
_c£82.95 ; <U+0080>121.95 ; $154.95
040 _aUtOrBLW
050 4 _aHB172.5
_b.V37 2013
072 7 _aKCH
_2bicssc
072 7 _aKC
_2bicssc
072 7 _aBUS021000
_2bisacsh
080 _a330
082 0 4 _a339
_223
245 0 0 _aVAR models in macroeconomics
_h[electronic resource] :
_bnew developments and applications : essays in honor of Christopher A. Sims /
_cedited by Thomas B. Fomby, Lutz Kilian, Anthony Murphy.
260 _aBingley, U.K. :
_bEmerald,
_c2013.
300 _a1 online resource (xxi, 427 p.)
490 1 _aAdvances in econometrics,
_x0731-9053 ;
_vv. 32
505 0 _aThe relationship between DSGE and VAR models / Raffaella Giacomini -- Do DSGE models forecast more accurately out-of-sample than VAR models? / Refet S. Gürkaynak, Burçin Kisacikoglu, Barbara Rossi -- Unit roots, cointegration, and pretesting in Var models / Nikolay Gospodinov, Ana María Herrera, Elena Pesavento -- Evaluating the accuracy of forecasts from vector autoregressions / Todd E. Clark, Michael W. McCracken -- Identifying structural vector autoregressions via changes in volatility / Helmut Lütkepohl -- Panel vector autoregressive models : a survey / Fabio Canova, Matteo Ciccarelli -- Mixed-frequency vector autoregressive models / Claudia Foroni, Eric Ghysels, Massimiliano Marcellino -- Thresholds and smooth transitions in vector autoregressive models / Kirstin Hubrich, Timo Teräsvirta -- Nonparametric vector autoregressions : specification, estimation, and inference / Ivan Jeliazkov -- Testing for common cycles in non-stationary VARs with varied frequency data / Thomas B. Götz, Alain Hecq, Jean-Pierre Urbain -- Multivariate dynamic probit models : an application to financial crises mutation / Bertrand Candelon ... [et al.] -- Multivariate dynamic probit models : an application to financial crises mutation / Bertrand Candelon ... [et al.].
520 _aVector autoregressive (VAR) models are among the most widely used econometric tools in the fields of macroeconomics and financial economics. Much of what we know about the response of the economy to macroeconomic shocks and about how various shocks have contributed to the evolution of macroeconomic and financial aggregates is based on VAR models. VAR models also have been used successfully for economic and business forecasting, for modeling risk and volatility, and for the construction of forecast scenarios. Since the introduction of VAR models by C.A. Sims in 1980, the VAR methodology has continuously evolved. Even today important extensions and reinterpretations of the VAR framework are being developed. Examples include VAR models for mixed-frequency data, VAR models as approximations to DSGE models, factor-augmented VAR models, new tools for the identification of structural shocks in VAR models, panel VAR approaches, and time-varying parameter VAR models. This volume collects contributions from some of the leading VAR experts in the world on VAR methods and applications. Each paper highlights and synthesizes a new development in this literature in a way that is accessible to practitioners, to graduate students, and to readers in other fields.
588 0 _aPrint version record
650 7 _aBusiness & Economics
_xEconometrics.
_2bisacsh
650 7 _aEconometrics.
_2bicssc
650 7 _aEconomics.
_2bicssc
650 0 _aMacroeconomics
_xMathematical models.
700 1 _aSims, Christopher A.
700 1 _aFomby, Thomas B.
700 1 _aKilian, Lutz.
700 1 _aMurphy, Anthony,
_d1957-
776 1 _z9781781907528
830 0 _aAdvances in econometrics ;
_vv. 32.
856 4 0 _uhttps://www.emerald.com/insight/publication/doi/10.1108/S0731-9053(2013)32
999 _c30819
_d30819