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Hybrid dynamic learning mechanism for multivariate time series segmentation

机译:多变量时间序列分割的混合动态学习机制

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To improve the efficiency of segmentation methods for multivariate time series, a hybrid dynamic learning mechanism for such series' segmentation is proposed. First, an incremental clustering algorithm is used to automatically cluster variables of multivariate time series. Second, common factors are extracted from every cluster by a dynamic factor model as an ensemble description of the system. Third, this common factor series is segmented by dynamic programming. The proposed method can potentially segment multivariate time series and not only performs segmentation better on multivariate time series with a large number of variables but also improves the running accuracy and efficiency of the algorithm, especially when analyzing complex datasets.
机译:为了提高多变量时间序列的分割方法的效率,提出了这种系列分割的混合动态学习机制。首先,增量聚类算法用于自动群集多变量时间序列的变量。其次,通过动态因子模型从每个集群中提取常见因素作为系统的集合描述。第三,这种普通因子系列由动态编程分段。所提出的方法可以潜在地段多变量时间序列,并且不仅在具有大量变量的多变量时间序列上更好地执行分割,而且还提高了算法的运行精度和效率,尤其是在分析复杂数据集时。

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