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Density-Based Clustering Method for Trends Analysis Using Evolving Data Stream

机译:基于趋势分析的基于密度的聚类方法使用不断的数据流

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Evolution of data in the data stream environment generates patterns at different time instances. The cluster formation changes with respect to time because of the behaviour and members of clusters. Data stream clustering (DSC) allows us to investigate the changes of the group behaviour. These changes in the behaviour of the group members over time lead to formation of new clusters and may make old clusters extinct. Also, these extinct old clusters may recur over time. The problem is to identify and record these change patterns of evolving data streams. The knowledge obtained from these change patterns is then used for trends analysis over evolving data streams. In order to address this flexible clustering requirement, density-based clustering method is proposed to dynamically cluster evolving data streams. The decay factor identifies formation of new clusters and diminishing of older clusters on arrival of data points. This indicates trends in evolving data streams.
机译:数据流环境中的数据的演变生成不同时间实例的模式。由于群集的行为和成员,群集形成在时间内变化。数据流群集(DSC)允许我们调查组行为的变化。这些群体成员行为随时间的变化导致形成新集群,可能使旧集群灭绝。此外,这些灭绝的旧集群可能会随着时间的推移来复发。问题是识别和记录这些变化模式的不断变化的数据流。然后将从这些变化模式获得的知识用于在不断发展的数据流上进行趋势分析。为了解决这种灵活的聚类要求,提出了基于密度的聚类方法来动态集群演变数据流。衰减因子识别新集群的形成,并在数据点到达时缩小旧集群。这表示了不断发展的数据流的趋势。

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