Clustering of time series data - a survey

@article{Liao2005ClusteringOT,
  title={Clustering of time series data - a survey},
  author={T. Warren Liao},
  journal={Pattern Recognit.},
  year={2005},
  volume={38},
  pages={1857-1874}
}
  • T. Warren Liao
  • Published in Pattern Recognit. 2005
  • Computer Science
  • Highlight Information
    Time series clustering has been shown effective in providing useful information in various domains. [...] Key Method The past researchs are organized into three groups depending upon whether they work directly with the raw data either in the time or frequency domain, indirectly with features extracted from the raw data, or indirectly with models built from the raw data. The uniqueness and limitation of previous research are discussed and several possible topics for future research are identified. Moreover, the…Expand Abstract

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