Multivariate Real-Time Signal Extraction by a Robust Adaptive Regression Filter |
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Authors: | Matthias Borowski Karen Schettlinger Ursula Gather |
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Affiliation: | 1. Fakult?t Statistik , Technische Universit?t Dortmund , Dortmund, Germany borowski@statistik.uni-dortmund.de;3. Fakult?t Statistik , Technische Universit?t Dortmund , Dortmund, Germany |
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Abstract: | ![]() We propose a new regression-based filter for extracting signals online from multivariate high frequency time series. It separates relevant signals of several variables from noise and (multivariate) outliers. Unlike parallel univariate filters, the new procedure takes into account the local covariance structure between the single time series components. It is based on high-breakdown estimates, which makes it robust against (patches of) outliers in one or several of the components as well as against outliers with respect to the multivariate covariance structure. Moreover, the trade-off problem between bias and variance for the optimal choice of the window width is approached by choosing the size of the window adaptively, depending on the current data situation. Furthermore, we present an advanced algorithm of our filtering procedure that includes the replacement of missing observations in real time. Thus, the new procedure can be applied in online-monitoring practice. Applications to physiological time series from intensive care show the practical effect of the proposed filtering technique. |
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Keywords: | Missing values Multivariate time series Online monitoring Robust regression Window width adaption |
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