Institute of Mathematical Statistics Lecture Notes - Monograph Series

Conditional-sum-of-squares estimation of models for stationary time series with long memory

P. M. Robinson

Abstract

Employing recent results of Robinson (2005) we consider the asymptotic properties of conditional-sum-of-squares (CSS) estimates of parametric models for stationary time series with long memory. CSS estimation has been considered as a rival to Gaussian maximum likelihood and Whittle estimation of time series models. The latter kinds of estimate have been rigorously shown to be asymptotically normally distributed in case of long memory. However, CSS estimates, which should have the same asymptotic distributional properties under similar conditions, have not received comparable treatment: the truncation of the infinite autoregressive representation inherent in CSS estimation has been essentially ignored in proofs of asymptotic normality. Unlike in short memory models it is not straightforward to show the truncation has negligible effect.

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Primary Subjects: 62M10
Keywords: long memory; conditional-sum-of-squares estimation; central limit theorem; almost sure convergence
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Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.lnms/1196285970
Digital Object Identifier: doi:10.1214/074921706000000996

2012 © Institute of Mathematical Statistics

Institute of Mathematical Statistics Lecture Notes - Monograph Series

Institute of Mathematical Statistics Lecture Notes - Monograph Series