Chapter 9: Semiparametric Independence Tests Between Two Infinite-order Cointegrated Series
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Published:2023
Chafik Bouhaddioui, Jean-Marie Dufour, Masaya Takano, 2023. "Semiparametric Independence Tests Between Two Infinite-order Cointegrated Series", Essays in Honor of Joon Y. Park: Econometric Theory, Yoosoon Chang, Sokbae Lee, J. Isaac Miller
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Abstract
The authors propose a semiparametric approach for testing independence between two infinite-order cointegrated vector autoregressive series (IVAR(∞)). The procedures considered can be viewed as extensions of classical methods proposed by Haugh (1976, JASA) and Hong (1996b, Biometrika) for testing independence between stationary univariate time series. The tests are based on the residuals of long autoregressions, hence allowing for computational simplicity, weak assumptions on the form of the underlying process, and a direct interpretation of the results in terms of innovations (or shocks). The test statistics are standardized versions of the sum of weighted squares of residual cross-correlation matrices. The weights depend on a kernel function and a truncation parameter. Multivariate portmanteau statistics can be viewed as a special case of our procedure based on the truncated uniform kernel. The asymptotic distributions of the test statistics under the null hypothesis are derived, and consistency is established against fixed alternatives of serial cross-correlation of unknown form. A simulation study is presented which indicates that the proposed tests have good size and power properties in finite samples.
