The effect of observables, functional specifications, model features and shocks on identification in linearized DSGE models

Ivashchenko Sergey, Mutschler Willi

Zusammenfassung

The decisions a researcher makes at the model building stage are crucial for parameter identification. This paper contains a number of applied tips for solving identifiability problems and improving the strength of DSGE model parameter identification by fine-tuning the (1) choice of observables, (2) functional specifications, (3) model features and (4) choice of structural shocks. We offer a formal approach based on well-established diagnostics and indicators to uncover and address both theoretical (yes/no) identifiability issues and weak identification from a Bayesian perspective. The concepts are illustrated by two exemplary models that demonstrate the identification properties of different investment adjustment cost specifications and output-gap definitions.

Schlüsselwörter

DSGE models; Local identification; Weak identification; Investment adjustment costs; Output-gap; Observables

Zitieren als

Ivashchenko, S., & Mutschler, W. (2019). The effect of observables, functional specifications, model features and shocks on identification in linearized DSGE models. Economic Modelling, 2019. (online first)

Details

Publikationstyp
Forschungsartikel (Zeitschrift)

Begutachtet
Ja

Publikationsstatus
online first

Jahr
2019

Fachzeitschrift
Economic Modelling

Band
2019

Sprache
Englisch

ISSN
0264-9993

DOI