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Regression-Based, Regression-Free and Model-Free Approaches for Robust Online Scale Estimation
Author(s) -
Karen Schettlinger,
Sarah Gelper,
Ursula Gather,
Christophe Croux
Publication year - 2008
Publication title -
ssrn electronic journal
Language(s) - English
Resource type - Journals
ISSN - 1556-5068
DOI - 10.2139/ssrn.1369126
Subject(s) - regression analysis , regression , scale (ratio) , robust regression , statistics , computer science , proper linear model , econometrics , polynomial regression , mathematics , geography , cartography
This paper compares methods for variability extraction from a univariate time series in real time. The online scale estimation is achieved by applying a robust scale functional to a moving time window. Scale estimators based on the residuals of a preceding regression step are compared with regressionfree and model-free techniques in a simulation study and in an application to a real time series. In the presence of level shifts or strong non-linear trends in the signal level, the model-free scale estimators perform especially well. However, the investigated regression-free and regression-based methods have higher breakdown points, they are applicable to data containing temporal correlations, and they are much more efficient.

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