A multivariate Wald‐Wolfowitz rank test against serial dependence
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Date
1995-03
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Canadian Journal of Statistics
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Abstract
Rank‐based cross‐covariance matrices, extending to the case of multivariate observed series the (univariate) rank autocorrelation coefficients introduced by Wald and Wolfowitz (1943), are considered. A permutational central limit theorem is established for the joint distribution of such matrices, under the null hypothesis of (multivariate) randomness as well as under contiguous alternatives of (multivariate) ARMA dependence. A rank‐based, permutationaily distribution‐free test of the portmanteau type is derived, and its asymptotic local power is investigated. Finally, a modified rank‐based version of Tiao and Box's model specification procedure is proposed, which is likely to be more reliable under non‐Gaussian conditions, and more robust against gross errors.
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Keywords
Wald‐Wolfowitz rank test, rank cross‐covariance matrix, multivariate ARMA models, multivariate portmanteau test, multivariate model identification
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Puri, M. L. “A multivariate Wald-Wolfowitz rank test against serial dependence.” Canadian Journal of Statistics (1995), Volume 23, 55–65. Co-author: Marc Hallin.
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