An ultra-fast time series distance measure to allow data mining in more complex real-world deployments
Shaghayegh Gharghabi(University of California, Riverside), Eamonn Keogh(University of California, Riverside), Shima Imani(University of California, Riverside), Amirali Darvishzadeh(University of California, Riverside), Anthony Bagnall(University of East Anglia)
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