A multivariate Wald‐Wolfowitz rank test against serial dependence
Loading...
Other Version
External File or Record
Can’t use the file because of accessibility barriers? Contact us
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Canadian Journal of Statistics
Permanent Link
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.
Series and Number:
EducationalLevel:
Is Based On:
Target Name:
Teaches:
Table of Contents
Description
Publisher's, offprint version
Citation
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.
Journal
Rights
This work may be protected by copyright unless otherwise stated.