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An Evaluation Framework for Temporal Subspace Clustering Approaches

机译:时间子空间聚类方法的评估框架

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Mining multivariate time series data by clustering is an important research topic. Time series can be clustered by standard approaches like k-means, or by advanced methods such as subspace clustering and triclustering. A problem with these new methods is the lack of a general evaluation scheme that can be used by researchers to understand and compare the algorithms, publications on new algorithms mostly use different datasets and evaluation measures in their experiments, making comparisons with other algorithms rather unfair. In this demonstration, we present our ongoing work on an experimental framework that offers the means for extensive visualization and evaluation of time series clustering algorithms. It includes a multitude of methods from different clustering paradigms such as full space clustering, subspace clustering, and triclustering. It provides a flexible data generator that can simulate different scenarios, especially for temporal subspace clustering. It offers external evaluation measures and visualization features that allow for effective analysis and better understanding of the obtained clusterings. Our demonstration system is available on our website.
机译:通过聚类挖掘多元时间序列数据是一个重要的研究课题。时间序列可以通过k-means等标准方法进行聚类,也可以通过子空间聚类和三角聚类等高级方法进行聚类。这些新方法的问题是缺乏一种可供研究人员用来理解和比较算法的通用评估方案,有关新算法的出版物在实验中大多使用不同的数据集和评估方法,这使得与其他算法的比较相当不公平。在此演示中,我们介绍了我们在实验框架上正在进行的工作,该实验框架为时间序列聚类算法的广泛可视化和评估提供了手段。它包括来自不同聚类范例的多种方法,例如全空间聚类,子空间聚类和细化。它提供了一个灵活的数据生成器,可以模拟不同的场景,尤其是对于时间子空间聚类。它提供了外部评估措施和可视化功能,可以进行有效的分析并更好地理解所获得的聚类。我们的演示系统可在我们的网站上找到。

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