Optimal Rank-Based Procedures for Time Series Analysis: Testing an ARMA Model Against Other ARMA Models
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Date
1988-03
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The Annals of Statistics
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Abstract
The problem of testing a given ARMA model (in which the density of the generating white noise is unspecified) against other ARMA models is considered. A distribution-free asymptotically most powerful test, based on a generalized linear serial rank statistic, is provided against contiguous ARMA alternatives with specified coefficients. In the case when the ARMA model in the alternative has unspecified coefficients, the asymptotic sufficiency (in the sense of Le Cam) of a finite-dimensional vector of rank statistics is established. This asymptotic sufficiency is used to derive an asymptotically maximin most powerful test, based on a generalized quadratic serial rank statistic. The asymptotically maximin optimal test statistic can be interpreted as a rank-based, weighted version of the classical Box-Pierce portmanteau statistic, to which it reduces, in some particular problems, asymptotically and under Gaussian assumptions.
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Publisher's, offprint version
Keywords
Autoregressive moving average, Time series models, Maximin, Time series, Randomness, White noise, Time series analysis, Autocorrelation, Covariance matrices, Rank tests
Citation
Puri, M. L. "Optimal rank--based procedures for time series analysis: testing an ARMA model against other ARMA models." Annals of Statistics (1988), Volume 16 Issue 1, 402–432. Co-author: Marc Hallin.
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Article