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Econometric Model Selection: Nonlinear Techniques and Forecasting

Author Jennifer L. Castle
Publisher VDM Verlag
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Book Details
PublisherVDM Verlag
ISBN / ASIN3639004582
ISBN-139783639004588
AvailabilityUsually ships in 24 hours
Sales Rank988,337
MarketplaceUnited States 🇺🇸

Description

Selection and forecasting are integral to econometric modelling but a unified treatment is rarely considered. This book addresses both issues, with an application to UK inflation. The theme of model selection underpins all chapters of the book. The development of any econometric model requires model selection rules because economic processes are extremely complex and the underlying data generating process is unknown. Furthermore, different model selection rules may be required for in-sample modelling and for forecasting, when the data generating process is evolutionary, non-stationary, and unknown to the econometrician. This book develops methods for selecting nonlinear models, proposing an easy to implement algorithm which circumvents identification problems, and builds equilibrium correction mechanisms of inflation to examine their forecast performance against robust devices. The book provides a comprehensive treatment of model selection, demonstrating that general-to-specific selection tools are integral to modelling and forecasting in a non-stationary world, and should be an invaluable read to those building econometric models for forecasting and policy evaluation.