Asymptotic Theory of Outlier Detection Algorithms for Linear Time Series Regression Models

Johansen S, Nielsen BENT

© 2016 Board of the Foundation of the Scandinavian Journal of Statistics. Outlier detection algorithms are intimately connected with robust statistics that down-weight some observations to zero. We define a number of outlier detection algorithms related to the Huber-skip and least trimmed squares estimators, including the one-step Huber-skip estimator and the forward search. Next, we review a recently developed asymptotic theory of these. Finally, we analyse the gauge, the fraction of wrongly detected outliers, for a number of outlier detection algorithms and establish an asymptotic normal and a Poisson theory for the gauge.

Keywords:

gauge

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iteration of one-step estimators

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weighted and marked empirical processes

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robustified least squares

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impulse indicator saturation

,

iterated martingale inequality

,

forward search

,

Journal Article

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Huber-skip

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one-step Huber-skip