Literature DB >> 35370341

An empirical evaluation of kernels for time series.

Mourtadha Badiane1, Pádraig Cunningham1.   

Abstract

There exist a variety of distance measures which operate on time series kernels. The objective of this article is to compare those distance measures in a support vector machine setting. A support vector machine is a state-of-the-art classifier for static (non-time series) datasets and usually outperforms k-Nearest Neighbour, however it is often noted that that 1-NN DTW is a robust baseline for time-series classification. Through a collection of experiments we determine that the most effective distance measure is Dynamic Time Warping and the most effective classifier is kNN. However, a surprising result is that the pairing of kNN and DTW is not the most effective model. Instead we have discovered via experimentation that Dynamic Time Warping paired with the Gaussian Support Vector Machine is the most accurate time series classifier. Finally, with good reason we recommend a slightly inferior (in terms of accuracy) model Time Warp Edit Distance paired with the Gaussian Support Vector Machine as it has a better theoretical basis. We also discuss the reduction in computational cost achieved by using a Support Vector Machine, finding that the Negative Kernel paired with the Dynamic Time Warping distance produces the greatest reduction in computational cost.
© The Author(s) 2021.

Entities:  

Keywords:  Kernel methods; Support vector machines; Time-series classification

Year:  2021        PMID: 35370341      PMCID: PMC8933385          DOI: 10.1007/s10462-021-10050-y

Source DB:  PubMed          Journal:  Artif Intell Rev        ISSN: 0269-2821            Impact factor:   8.139


  2 in total

1.  Time warp edit distance with stiffness adjustment for time series matching.

Authors:  Pierre-François Marteau
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2009-02       Impact factor: 6.226

2.  The great time series classification bake off: a review and experimental evaluation of recent algorithmic advances.

Authors:  Anthony Bagnall; Jason Lines; Aaron Bostrom; James Large; Eamonn Keogh
Journal:  Data Min Knowl Discov       Date:  2016-11-23       Impact factor: 3.670

  2 in total

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