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Kernel-density-based clustering of time series subsequences using a continuous random-walk noise model

机译:使用连续随机游走噪声模型的基于核密度的时间序列子序列聚类

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Noise levels in time series subsequence data are typically very high, and properties of the noise differ front those of white noise. The proposed algorithm incorporates a continuous random-walk noise model into kernel-density-based clustering. Evaluation is done by testing to what extent the resulting clusters are predictive of the process that generated the time series. It is shown that the new algorithm not only outperforms partitioning techniques that lead to trivial and unsatisfactory results under the given quality measure, but also improves upon other density-based algorithms. The results suggest that the noise elimination properties of kernel-density-based clustering algorithms can be of significant value for the use of clustering in preprocessing of data.
机译:时间序列子序列数据中的噪声级别通常很高,并且噪声的属性与白噪声的属性不同。所提出的算法将连续的随机游走噪声模型纳入基于核密度的聚类中。通过测试所得聚类在多大程度上可预测生成时间序列的过程来进行评估。结果表明,该新算法不仅性能优于在给定质量指标下导致琐碎和不令人满意的结果的分区技术,而且还改进了其他基于密度的算法。结果表明,基于核密度的聚类算法的噪声消除特性对于在数据预处理中使用聚类可能具有重要价值。

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