Robust estimation for ARMA models
classification
🧮 math.ST
stat.TH
keywords
estimatesrobusttheyarmam-estimatesmodelsadvantagesasymptotic
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This paper introduces a new class of robust estimates for ARMA models. They are M-estimates, but the residuals are computed so the effect of one outlier is limited to the period where it occurs. These estimates are closely related to those based on a robust filter, but they have two important advantages: they are consistent and the asymptotic theory is tractable. We perform a Monte Carlo where we show that these estimates compare favorably with respect to standard M-estimates and to estimates based on a diagnostic procedure.
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