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Segmentation is an important step in processing and analyzing time series. In this article, we present an approach to speed up some standard time series segmentation techniques. Often, time series segmentation is based on piecewise polynomial approximations of the time series (including piecewise constant or linear approximations as special cases). Basically, a least-squares fit with a polynomial...
The paper presents SwiftSeg, a novel technique for online time series segmentation and piecewise polynomial representation. The segmentation approach is based on a least-squares approximation of time series in sliding and/or growing time windows utilizing a basis of orthogonal polynomials. This allows the definition of fast update steps for the approximating polynomial, where the computational effort...
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