2022
DOI: 10.48550/arxiv.2206.12190
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SECLEDS: Sequence Clustering in Evolving Data Streams via Multiple Medoids and Medoid Voting

Abstract: Sequence clustering in a streaming environment is challenging because it is computationally expensive, and the sequences may evolve over time. K-medoids or Partitioning Around Medoids (PAM) is commonly used to cluster sequences since it supports alignment-based distances, and the k-centers being actual data items helps with cluster interpretability. However, offline k-medoids has no support for concept drift, while also being prohibitively expensive for clustering data streams. We therefore propose SECLEDS, a … Show more

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