First and Second Derivatives in Time Series Classification Using DTW |
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Authors: | Tomasz Górecki Maciej Łuczak |
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Affiliation: | 1. Faculty of Mathematics and Computer Science, Adam Mickiewicz University, Umultowska 87, Poznań, Polandtomasz.gorecki@amu.edu.pl;3. Department of Civil and Environmental Engineering, Koszalin University of Technology, ?niadeckich 2, Koszalin, Poland |
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Abstract: | In our previous work, we developed a new distance function based on a derivative and showed that our algorithm is effective. In contrast to well-known measures from the literature, our approach considers the general shape of a time series rather than standard distance of function (value) comparison. The new distance was used in classification with the nearest neighbor rule. Now we improve on our previous technique by adding the second derivative. In order to provide a comprehensive comparison, we conducted a set of experiments, testing effectiveness on 47 time series datasets from a wide variety of application domains. Our experiments show that this new method provides a significantly more accurate classification on the examined datasets. |
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Keywords: | Data mining Derivative dynamic time warping Dynamic time warping Time series |
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