articleApr 20, 2006Closed access

Density-Based Clustering over an Evolving Data Stream with Noise

Fudan University · Simon Fraser University

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Abstract

Clustering is an important task in mining evolving data streams. Beside the limited memory and one-pass constraints, the nature of evolving data streams implies the following requirements for stream clustering: no assumption on the number of clusters, discovery of clusters with arbitrary shape and ability to handle outliers. While a lot of clustering algorithms for data streams have been proposed, they offer no solution to the combination of these requirements. In this paper, we present DenStream, a new approach for discovering clusters in an evolving data stream. The “dense” micro-cluster (named core-micro-cluster) is introduced to summarize the clusters with arbitrary shape, while the potential…

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998
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28.42
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100%
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Authors

4

Topics & keywords

Keywords
  • Computer science
  • Cluster analysis
  • Noise (video)
  • Data mining
  • Artificial intelligence
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