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Including contributions spanning a variety of theoretical and
applied topics in econometrics, this volume of Advances in
Econometrics is published in honour of Cheng Hsiao. In the first
few chapters of this book, new theoretical panel and time series
results are presented, exploring JIVE estimators, HAC, HAR and
various sandwich estimators, as well as asymptotic distributions
for using information criteria to distinguish between the unit root
model and explosive models. Other chapters address topics such as
structural breaks or growth empirics; auction models; and
semiparametric methods testing for common vs. individual trends.
Three chapters provide novel empirical approaches to applied
problems, such as estimating the impact of survey mode on
responses, or investigating how cross-sectional and spatial
dependence of mortgages varies by default rates and geography. In
the final chapters, Cheng Hsiao offers a forward-focused discussion
of the role of big data in economics. For any researcher of
econometrics, this is an unmissable volume of the most current and
engaging research in the field.
This important collection brings together leading econometricians
to discuss advances in the areas of the econometrics of panel data.
The papers in this collection can be grouped into two categories.
The first, which includes chapters by Amemiya, Baltagi, Arellano,
Bover and Labeaga, primarily deal with different aspects of limited
dependent variables and sample selectivity. The second group of
papers, including those by Nerlove, Schmidt and Ahn, Kiviet, Davies
and Lahiri, consider issues that arise in the estimation of
dyanamic (possibly) heterogeneous panel data models. Overall, the
contributors focus on the issues of simplifying complex real-world
phenomena into easily generalisable inferences from individual
outcomes. As the contributions of G. S. Maddala in the fields of
limited dependent variables and panel data were particularly
influential, it is a fitting tribute that this volume is dedicated
to him.
This book is concerned with recent developments in time series and
panel data techniques for the analysis of macroeconomic and
financial data. It provides a rigorous, nevertheless user-friendly,
account of the time series techniques dealing with univariate and
multivariate time series models, as well as panel data models. It
is distinct from other time series texts in the sense that it also
covers panel data models and attempts at a more coherent
integration of time series, multivariate analysis, and panel data
models. It builds on the author's extensive research in the areas
of time series and panel data analysis and covers a wide variety of
topics in one volume. Different parts of the book can be used as
teaching material for a variety of courses in econometrics. It can
also be used as reference manual. It begins with an overview of
basic econometric and statistical techniques, and provides an
account of stochastic processes, univariate and multivariate time
series, tests for unit roots, cointegration, impulse response
analysis, autoregressive conditional heteroskedasticity models,
simultaneous equation models, vector autoregressions, causality,
forecasting, multivariate volatility models, panel data models,
aggregation and global vector autoregressive models (GVAR). The
techniques are illustrated using Microfit 5 (Pesaran and Pesaran,
2009, OUP) with applications to real output, inflation, interest
rates, exchange rates, and stock prices.
This important collection brings together leading econometricians to discuss recent advances in the areas of the econometrics of panel data, limited dependent variable models and limited dependent variable models with panel data. The contributors focus on the issues of simplifying complex real world phenomena into easily generalizable inferences from individual outcomes. As the contributions of G. S. Maddala in the fields of limited dependent variables and panel data have been particularly influential, it is a fitting tribute that this volume is dedicated to him.
The GVAR is a global Vector autoregression model of the global
economy. The model was initially developed in the early 2000 by
Professor Pesaran and co-authors, for the main purpose of analysing
credit risk in a globalised economy. Starting from mid-2000 the
model was substantially enlarged in the context of a project
financed by the ECB, to comprise all major economies and the Euro
area as a whole. The purpose of this version was to exploit the
rich modelisation of international linkages in order to simulate
and analyse global macro scenarios of high policy interest. The
rich, yet manageable, specification of international linkages has
stimulated a vast literature on the GVAR. Since early 2011, the
basic model - and its data base - has also available on a dedicated
GVAR-Toolbox website with an easy-to-use interface allowing
practical applications by an extended audience, as well as more
complex analysis by the expert public. The book provides an
overview of the extensions and applications of the GVAR which have
been developed in recent years. Such applications are grouped in
three main categories: 1) International transmission and
forecasting; 2) Finance applications; and 3) Regional applications.
By using a language which is accessible to not econometricians, the
book reaches out to the extended audience of practitioners and
policy makers interested in understanding channels and impacts of
international linkages.
This book provides a comprehensive description of the
state-of-the-art in modelling global and national economies. It
introduces the long-run structural approach to modelling that can
be readily adopted for use in understanding how economies work, and
in generating forecasts for decision- and policy-makers. The book
contains a thorough description of recent developments in
macroeconomics and econometrics, which should be of interest to
advanced students and researchers, but is also written to be
accessible and helpful to practitioners in government and the
private sector. The long-run structural approach is illustrated
with various global and national examples, including a step-by-step
description of the development and use of a model of the UK
economy. Throughout, the book emphasises the use of
macroeconometric modelling in the real world and is written in a
way that ensures the techniques illustrated can be replicated or
applied in new contexts. The transparency and pragmatism of the
modelling approach used within this book will be attractive to
practitioners who need manageable and interpretable models to
answer specific questions.
This book is concerned with recent developments in time series and
panel data techniques for the analysis of macroeconomic and
financial data. It provides a rigorous, nevertheless user-friendly,
account of the time series techniques dealing with univariate and
multivariate time series models, as well as panel data models. It
is distinct from other time series texts in the sense that it also
covers panel data models and attempts at a more coherent
integration of time series, multivariate analysis, and panel data
models. It builds on the author's extensive research in the areas
of time series and panel data analysis and covers a wide variety of
topics in one volume. Different parts of the book can be used as
teaching material for a variety of courses in econometrics. It can
also be used as reference manual. It begins with an overview of
basic econometric and statistical techniques, and provides an
account of stochastic processes, univariate and multivariate time
series, tests for unit roots, cointegration, impulse response
analysis, autoregressive conditional heteroskedasticity models,
simultaneous equation models, vector autoregressions, causality,
forecasting, multivariate volatility models, panel data models,
aggregation and global vector autoregressive models (GVAR). The
techniques are illustrated using Microfit 5 (Pesaran and Pesaran,
2009, OUP) with applications to real output, inflation, interest
rates, exchange rates, and stock prices.
This book provides a comprehensive description of the
state-of-the-art in modelling global and national economies. It
introduces the long-run structural approach to modelling that can
be readily adopted for use in understanding how economies work, and
in generating forecasts for decision- and policy-makers. The book
contains a thorough description of recent developments in
macroeconomics and econometrics, which should be of interest to
advanced students and researchers, but is also written to be
accessible and helpful to practitioners in government and the
private sector. The long-run structural approach is illustrated
with various global and national examples, including a step-by-step
description of the development and use of a model of the UK
economy. Throughout, the book emphasises the use of
macroeconometric modelling in the real world and is written in a
way that ensures the techniques illustrated can be replicated or
applied in new contexts. The transparency and pragmatism of the
modelling approach used within this book will be attractive to
practitioners who need manageable and interpretable models to
answer specific questions.
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