Choosing between identification schemes in noisy-news models

Author:

Chan Joshua C. C.12,Eisenstat Eric3,Koop Gary4

Affiliation:

1. Purdue University , West Lafayette, IN , USA

2. University of Technology Sydney , Ultimo, NSW , Australia

3. The University of Queensland School of Economics , St Lucia, QLD , Australia

4. University of Strathclyde , Glasgow , UK

Abstract

Abstract This paper is about identifying structural shocks in noisy-news models using structural vector autoregressive moving average (SVARMA) models. We develop a new identification scheme and efficient Bayesian methods for estimating the resulting SVARMA. We discuss how our identification scheme differs from the one which is used in existing theoretical and empirical models. Our main contributions lie in the development of methods for choosing between identification schemes. We estimate specifications with up to 20 variables using US macroeconomic data. We find that our identification scheme is preferred by the data, particularly as the size of the system is increased and that noise shocks generally play a negligible role. However, small models may overstate the importance of noise shocks.

Funder

Australian Research Council Discover Project

Publisher

Walter de Gruyter GmbH

Subject

Economics and Econometrics,Social Sciences (miscellaneous),Analysis,Economics and Econometrics,Social Sciences (miscellaneous),Analysis

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