On identifiability, maximum-likelihood, and novel HOS based criteria

Considers estimation and classification problems for a stretch of stationary data containing a non-Gaussian linear process and additive Gaussian noise of unknown covariance (AGN/UC). To allow general noncausal and nonminimum phase (NC/NMP) ARMA models, and develop estimation and classification schem...

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Bibliographic Details
Published inFifth ASSP Workshop on Spectrum Estimation and Modeling pp. 217 - 221
Main Author Giannakis, G.B.
Format Conference Proceeding
LanguageEnglish
Published IEEE 1990
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Summary:Considers estimation and classification problems for a stretch of stationary data containing a non-Gaussian linear process and additive Gaussian noise of unknown covariance (AGN/UC). To allow general noncausal and nonminimum phase (NC/NMP) ARMA models, and develop estimation and classification schemes which are immune to AGN/UC higher-order statistics (HOS) are resorted to. Time-domain optimality criteria are discussed which employ a finite set of sample cumulant lags, while the frequency-domain criteria involve sample polyspectral lags.< >
DOI:10.1109/SPECT.1990.205578