AN APPLICATION OF THE SCHUR‐COHN ALGORITHM TO TIME SERIES ANALYSIS
Roger W. Barnard and
Kamal C. Chanda
Journal of Time Series Analysis, 1995, vol. 16, issue 5, 445-449
Abstract:
Abstract. Standard least squares analysis of autoregressive moving‐average (ARMA) processes with errors‐in‐variables entails the construction of a new set of parameters which are functions of the original ARMA parameters, and requires that derivatives of these new parameters of order three or less with respect to the ARMA parameters exist and be bounded. The boundedness of these derivatives in turn depends critically on the nonsingularity of a matrix B which is a function of the ARMA parameters via the new parameters in the model. A particular version of the classical Schur–Cohn algorithm enables us to establish this nonsingularity.
Date: 1995
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Persistent link: https://EconPapers.repec.org/RePEc:bla:jtsera:v:16:y:1995:i:5:p:445-449
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