Chapter 1: Tests for Random Coefficient Variation in Vector Autoregressive Models
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Published:2022
Dante Amengual, Gabriele Fiorentini, Enrique Sentana, 2022. "Tests for Random Coefficient Variation in Vector Autoregressive Models", Essays in Honour of Fabio Canova, Juan J. Dolado, Luca Gambetti, Christian Matthes
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Abstract
The authors propose the information matrix test to assess the constancy of mean and variance parameters in vector autoregressions (VAR). They additively decompose it into several orthogonal components: conditional heteroskedasticity and asymmetry of the innovations, and their unconditional skewness and kurtosis. Their Monte Carlo simulations explore both its finite size properties and its power against i.i.d. coefficients, persistent but stationary ones, and regime switching. Their procedures detect variation in the autoregressive coefficients and residual covariance matrix of a VAR for the US GDP growth rate and the statistical discrepancy, but they fail to detect any covariation between those two sets of coefficients.
