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Optimized Word-Size Time Series Representation Method Using a Genetic Algorithm with a Flexible Encoding Scheme

机译:使用遗传算法和灵活编码方案的优化字长时间序列表示方法

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Performing time series mining tasks directly on raw data is inefficient, therefore these data require representation methods that transform them into low-dimension spaces where they can be managed more efficiently. Owing to its simplicity, the piecewise aggregate approximation is a popular time series representation method. But this method uses a uniform word-size for all the segments in the time series, which reduces the quality of the representation. Although some alternatives use representations with different word-sizes in a way that reflects the various information contents of different segments, such methods apply a complicated representation scheme, as it uses a different representation for each time series in the dataset. In this paper we present two modifications of the original piecewise aggregate approximation. The novelty of these modifications is that they use different word-sizes, which allows for a flexible representation that reflects the level of activity in each segment, yet these new medications address this problem on a dataset-level, which simplifies establishing a lower bounding distance. The word-sizes are determined through an optimization process. The experiments we conducted on a variety of time series datasets validate the two new modifications.
机译:直接对原始数据执行时间序列挖掘任务效率很低,因此,这些数据需要使用表示方法将其转换为低维空间,从而可以更有效地对其进行管理。由于其简单性,分段聚合近似是一种流行的时间序列表示方法。但是此方法对时间序列中的所有段使用统一的字长,从而降低了表示质量。尽管某些替代方案以反映不同段的各种信息内容的方式使用具有不同字长的表示形式,但是由于该方法针对数据集中的每个时间序列使用了不同的表示形式,因此此类方法应用了复杂的表示方案。在本文中,我们提出了对原始分段聚合近似的两个修改。这些修改的新颖之处在于它们使用不同的字长,从而可以灵活地反映每个段中的活动水平,但是这些新药物在数据集级别上解决了该问题,从而简化了确定较低边界距离的过程。字长是通过优化过程确定的。我们对各种时间序列数据集进行的实验验证了这两项新修改。

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