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Iterative Incremental Clustering of Time Series

机译:时间序列的迭代增量聚类

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摘要

We present a novel anytime version of partitional clustering algorithm, such as k-Means and EM, for time series. The algorithm works by leveraging off the multi-resolution property of wavelets. The dilemma of choosing the initial centers is mitigated by initializing the centers at each approximation level, using the final centers returned by the coarser representations. In addition to casting the clustering algorithms as anytime algorithms, this approach has two other very desirable properties. By working at lower dimensionalities we can efficiently avoid local minima. Therefore, the quality of the clustering is usually better than the batch algorithm. In addition, even if the algorithm is run to completion, our approach is much faster than its batch counterpart. We explain, and empirically demonstrate these surprising and desirable properties with comprehensive experiments on several publicly available real data sets. We further demonstrate that our approach can be generalized to a framework of much broader range of algorithms or data mining problems.
机译:我们针对时间序列提出了一种新颖的随时可用版本的分区聚类算法,例如k-Means和EM。该算法通过利用小波的多分辨率特性来工作。通过使用由较粗略表示法返回的最终中心,在每个近似级别上初始化中心,可以缓解选​​择初始中心的难题。除了将聚类算法转换为随时算法之外,此方法还具有其他两个非常理想的属性。通过在较低维度上工作,我们可以有效地避免局部最小值。因此,聚类的质量通常优于批处理算法。另外,即使算法运行完成,我们的方法也比其批处理方法要快得多。我们通过在几个可公开获得的真实数据集上进行综合实验,来解释并凭经验证明这些令人惊讶和令人期望的特性。我们进一步证明,我们的方法可以推广到一个范围更广的算法或数据挖掘问题的框架。

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