Estimating the variance of the correlated excess disturbance method polynomial maximization
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Abstract
Examined of the use of new algorithm of statistical evaluation of parameters of the casual no Gaussian processes assumed that variate description of cumulant and moment . The assessment of a dispersion of statistically dependent no Gaussian exces that processes the correlated is found. Are analysed properties of assessments
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