Higher-order statistics for DSGE models

Mutschler W


Abstract
Closed-form expressions for unconditional moments, cumulants and polyspectra of order higher than two are derived for non-Gaussian or nonlinear (pruned) solutions to DSGE models. Apart from the existence of moments and white noise property no distributional assumptions are needed. The accuracy and utility of the formulas for computing skewness and kurtosis are demonstrated by three prominent models: the baseline medium-sized New Keynesian model used for empirical analysis (first-order approximation), a small-scale business cycle model (second-order approximation) and the neoclassical growth model (third-order approximation). Both the Gaussian as well as Student’s t-distribution are considered as the underlying stochastic processes. Lastly, the efficiency gain of including higher-order statistics is demonstrated by the estimation of a RBC model within a Generalized Method of Moments framework.

Keywords
Higher-order moments; Cumulants; Polyspectra; Nonlinear DSGE; Pruning; GMM



Publication type
Research article (journal)

Peer reviewed
Yes

Publication status
Published

Year
2018

Journal
Econometrics and Statistics

Volume
6

Pages range
44 - 56

Language
English

ISSN
2452-3062

DOI

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