dc.creatorGiusti, Rafael
dc.creatorSilva, Diego Furtado
dc.creatorBatista, Gustavo Enrique de Almeida Prado Alves
dc.date.accessioned2016-04-25T14:21:51Z
dc.date.accessioned2018-07-04T17:10:42Z
dc.date.available2016-04-25T14:21:51Z
dc.date.available2018-07-04T17:10:42Z
dc.date.created2016-04-25T14:21:51Z
dc.date.issued2015
dc.identifierLecture Notes in Computer Science, Cham, v.9385, p. 108-119, 2015
dc.identifier0302-9743
dc.identifierhttp://www.producao.usp.br/handle/BDPI/50099
dc.identifier10.1007/978-3-319-24465-5_10
dc.identifierhttp://dx.doi.org/10.1007/978-3-319-24465-5_10
dc.identifier.urihttp://repositorioslatinoamericanos.uchile.cl/handle/2250/1645711
dc.description.abstractTime series has attracted much attention in recent years, with thousands of methods for diverse tasks such as classification, clustering, prediction, and anomaly detection. Among all these tasks, classification is likely the most prominent task, accounting for most of the applications and attention from the research community. However, in spite of the huge number of methods available, there is a significant body of empirical evidence indicating that the 1-nearest neighbor algorithm (1-NN) in the time domain is “extremely difficult to beat”. In this paper, we evaluate the use of different data representations in time series classification. Our work is motivated by methods used in related areas such as signal processing and music retrieval. In these areas, a change of representation frequently reveals features that are not apparent in the original data representation. Our approach consists of using different representations such as frequency, wavelets, and autocorrelation to transform the time series into alternative decision spaces. A classifier is then used to provide a classification for each test time series in the alternative domain. We investigate how features provided in different domains can help in time series classification. We also experiment with different ensembles to investigate if the data representations are a good source of diversity for time series classification. Our extensive experimental evaluation approaches the issue of combining sets of representations and ensemble strategies, resulting in over 300 ensemble configurations.
dc.languageeng
dc.publisherSpringer
dc.publisherCham
dc.relationLecture Notes in Computer Science
dc.rightsCopyright Springer International Publishing
dc.rightsclosedAccess
dc.titleTime series classification with representation ensembles
dc.typeArtículos de revistas


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