Testing for a set of linear restrictions in varma models using autoregressive metric: An application to granger causality test

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Abstract

In this paper we propose a test for a set of linear restrictions in a Vector Autoregressive Moving Average (VARMA) model. This test is based on the autoregressive metric, a notion of distance between two univariate ARMA models, M 0 and M 1 , introduced by Piccolo in 1990. In particular, we show that this set of linear restrictions is equivalent to a null distance d(M 0 , M 1 ) between two given ARMA models. This result provides the logical basis for using d(M 0 , M 1 ) = 0 as a null hypothesis in our test. Some Monte Carlo evidence about the finite sample behavior of our testing procedure is provided and two empirical examples are presented.

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Di Iorio, F., & Triacca, U. (2014). Testing for a set of linear restrictions in varma models using autoregressive metric: An application to granger causality test. Econometrics, 2(4), 203–216. https://doi.org/10.3390/econometrics2040203

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