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Título

An empirical evaluation of similarity measures for time series classification

AutorSerra, Joan CSIC ORCID; Arcos Rosell, Josep Lluís CSIC ORCID
Palabras claveTime series
Similarity measures
Classification
Clustering
Evaluation
Fecha de publicación2014
EditorElsevier
CitaciónKnowledge-Based Systems 67: 305- 314 (2014)
ResumenTime series are ubiquitous, and a measure to assess their similarity is a core part of many computational systems. In particular, the similarity measure is the most essential ingredient of time series clustering and classification systems. Because of this importance, countless approaches to estimate time series similarity have been proposed. However, there is a lack of comparative studies using empirical, rigorous, quantitative, and large-scale assessment strategies. In this article, we provide an extensive evaluation of similarity measures for time series classification following the aforementioned principles. We consider 7 different measures coming from alternative measure 'families', and 45 publicly-available time series data sets coming from a wide variety of scientific domains. We focus on out-of-sample classification accuracy, but in-sample accuracies and parameter choices are also discussed. Our work is based on rigorous evaluation methodologies and includes the use of powerful statistical significance tests to derive meaningful conclusions. The obtained results show the equivalence, in terms of accuracy, of a number of measures, but with one single candidate outperforming the rest. Such findings, together with the followed methodology, invite researchers on the field to adopt a more consistent evaluation criteria and a more informed decision regarding the baseline measures to which new developments should be compared. © 2014 Elsevier B.V. All rights reserved.
URIhttp://hdl.handle.net/10261/131200
DOI10.1016/j.knosys.2014.04.035
Identificadoresdoi: 10.1016/j.knosys.2014.04.035
issn: 0950-7051
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