• Corpus ID: 238198754

MultiRocket: Multiple pooling operators and transformations for fast and effective time series classification

  title={MultiRocket: Multiple pooling operators and transformations for fast and effective time series classification},
  author={Chang Wei Tan and Angus Dempster and C. Bergmeir and Geoffrey I. Webb},
We propose MultiRocket, a fast time series classification (TSC) algorithm that achieves state-of-the-art performance with a tiny fraction of the time and without the complex ensembling structure of many state-of-the-art methods. MultiRocket improves on MiniRocket, one of the fastest TSC algorithms to date, by adding multiple pooling operators and transformations to improve the diversity of the features generated. In addition to processing the raw input series, MultiRocket also applies first… 
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