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Author:
Ghysels, Eric, 1956- author.
Title:
Applied economic forecasting using time series methods / Eric Ghysels (University of North Carolina, Chapel Hill, United States), Massimiliano Marcellino (Bocconi University, Milan, Italy).
Publisher:
Oxford University Press,
Copyright Date:
2018
Description:
xviii, 597 pages : illustrations ; 27 cm
Subject:
Economic forecasting--Mathematical models.
Economic forecasting--Statistical methods.
Economic forecasting--Mathematical models.
Economic forecasting--Statistical methods.
Other Authors:
Marcellino, Massimiliano, author.
Notes:
Includes bibliographical references (pages 559-586) and indexes.
Contents:
PART I: Forecasting with the Linear Regression Model. Chapter 1 -The Baseline Linear Regression Model. Chapter 2 -- Model Mis-Specification. Chapter 3 -- The Dynamic Linear Regression Model. Chapter 4 -- Forecast Evaluation and Combination. PART II: Forecasting with Time Series Models. Chapter 5 -- Univariate Time Series Models. Chapter 6 -- VAR Models. Chapter 7 -- Error Correction Models. Chapter 8 -- Bayesian VAR Models. PART III: TAR, Markov Switching and State Space Models. Chapter 9 -- TAR and STAR Models. Chapter 10 -- Markov Switching Models. Chapter 11 -- State Space Models and the Kalman Filter. PART IV: Mixed Frequency, Large Datasets and Volatility. Chapter 12 -- Models for Mixed Frequency Data. Chapter 13 -- Models for Large Datasets. Chapter 14 -- Forecasting Volatility.
Summary:
Economic forecasting is a key ingredient of decision making both in the public and in the private sector. Because economic outcomes are the result of a vast, complex, dynamic and stochastic system, forecasting is very difficult and forecast errors are unavoidable. Because forecast precision and reliability can be enhanced by the use of proper econometric models and methods, this innovative book provides an overview of both theory and applications. Undergraduate and graduate students learning basic and advanced forecasting techniques will be able to build from strong foundations, and researchers in public and private institutions will have access to the most recent tools and insights. Readers will gain from the frequent examples that enhance understanding of how to apply techniques, first by using stylized settings and then by real data applications-focusing on macroeconomic and financial topics. This is first and foremost a book aimed at applying time series methods to solve real-world forecasting problems. Applied Economic Forecasting using Time Series Methods starts with a brief review of basic regression analysis with a focus on specific regression topics relevant for forecasting, such as model specification errors, dynamic models and their predictive properties as well as forecast evaluation and combination. Several chapters cover univariate time series models, vector autoregressive models, cointegration and error correction models, and Bayesian methods for estimating vector autoregressive models. A collection of special topics chapters study Threshold and Smooth Transition Autoregressive (TAR and STAR) models, Markov switching regime models, state space models and the Kalman filter, mixed frequency data models, nowcasting, forecasting using large datasets and, finally, volatility models. There are plenty of practical applications in the book and both EViews and R code are available online. -- Provided by publisher.
ISBN:
0190622016
9780190622015
OCLC:
(OCoLC)1010658777
LCCN:
2017046487
Locations:
USUX851 -- Iowa State University - Parks Library (Ames)

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This resource is supported by the Institute of Museum and Library Services under the provisions of the Library Services and Technology Act as administered by State Library of Iowa.