Non-isometric transforms in time series classification using DTW
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摘要
Over recent years the popularity of time series has soared. As a consequence there has been a dramatic increase in the amount of interest in querying and mining such data. In particular, many new distance measures between time series have been introduced. In this paper we propose a new distance function based on derivatives and transforms of time series. In contrast to well-known measures from the literature, our approach combines three distances: DTW distance between time series, DTW distance between derivatives of time series, and DTW distance between transforms of time series. The new distance is used in classification with the nearest neighbor rule. In order to provide a comprehensive comparison, we conducted a set of experiments, testing effectiveness on 47 time series data sets from a wide variety of application domains. Our experiments show that this new method provides a significantly more accurate classification on the examined data sets.
论文关键词:Dynamic time warping,Derivative dynamic time warping,Time series,Hilbert transform,Cosine transform,Sine transform
论文评审过程:Received 30 July 2013, Revised 9 November 2013, Accepted 17 February 2014, Available online 28 February 2014.
论文官网地址:https://doi.org/10.1016/j.knosys.2014.02.011