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Semiparametric estimation of fractional cointegrating subspaces

1 August 2007
Willa W. Chen
Clifford M. Hurvich
ArXiv (abs)PDFHTML
Abstract

We consider a common-components model for multivariate fractional cointegration, in which the s≥1s\geq1s≥1 components have different memory parameters. The cointegrating rank may exceed 1. We decompose the true cointegrating vectors into orthogonal fractional cointegrating subspaces such that vectors from distinct subspaces yield cointegrating errors with distinct memory parameters. We estimate each cointegrating subspace separately, using appropriate sets of eigenvectors of an averaged periodogram matrix of tapered, differenced observations, based on the first mmm Fourier frequencies, with mmm fixed. The angle between the true and estimated cointegrating subspaces is op(1)o_p(1)op​(1). We use the cointegrating residuals corresponding to an estimated cointegrating vector to obtain a consistent and asymptotically normal estimate of the memory parameter for the given cointegrating subspace, using a univariate Gaussian semiparametric estimator with a bandwidth that tends to ∞\infty∞ more slowly than nnn. We use these estimates to test for fractional cointegration and to consistently identify the cointegrating subspaces.

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