Title of article :
A regularised estimator for long-range dependent processes
Author/Authors :
Vivero، نويسنده , , Oskar and Heath، نويسنده , , William P.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
10
From page :
287
To page :
296
Abstract :
There is significant interest in long-range dependent processes since they occur in a wide range of phenomena across different areas of study. Based on the available models capable of describing long-range dependence, various parameter estimation methods have been developed. In this paper we revisit the maximum likelihood estimator and its computationally efficient approximations: Whittle’s Estimator and the Circulant Embedding Estimator. In particular, this paper proves the asymptotic properties of the Circulant Embedding estimator and establishes the asymptotic equivalence between the three estimators. Furthermore, it is shown that the three methods are ill-conditioned and thus highly sensitive to the presence of measurement errors. Finally, we introduce a regularisation method that improves the performance of the maximum likelihood methods when the datasets have been largely contaminated with errors.
Keywords :
Maximum likelihood estimators , Regularisation , long-term memory , Gaussian processes , Fractals , Matrix inversion , Covariance matrices , Parameter estimation
Journal title :
Automatica
Serial Year :
2012
Journal title :
Automatica
Record number :
1448594
Link To Document :
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