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A Shapelet Learning Method for Time Series Classification

机译:用于时间序列分类的Shapelet学习方法

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Time series classification (TSC) problem is important due to the pervasiveness of time series data. Shapelet provides a mechanism for the problem by its ability to measure local shape similarity. However, shapelets need to be searched from massive sub-sequences. To address this problem, this paper proposes a novel shapelet learning method for time series classification. The proposed method uses a self-organizing incremental neural network to learn shapelet candidates. The learned candidates reduce greatly in quantity and improve much in quality. After that, an exponential function is proposed to transform the time series data. Besides, all shapelets are selected at the same time by using an alternative attribute selection technique. Experimental results demonstrate statistically significant improvement in terms of accuracies and running speeds against 10 baselines over 28 time series datasets.
机译:由于时间序列数据的普遍性,时间序列分类(TSC)问题很重要。 Shapelet通过测量局部形状相似性的能力提供了解决问题的机制。但是,需要从大量子序列中搜索形状。为了解决这个问题,本文提出了一种新颖的小波学习方法用于时间序列分类。所提出的方法使用自组织增量神经网络来学习小形候选。博学的候选人数量大大减少,质量大大提高。此后,提出了一种指数函数来转换时间序列数据。此外,通过使用替代属性选择技术,可以同时选择所有形状。实验结果表明,在28个时间序列数据集中,相对于10个基线,其准确性和运行速度在统计上都有显着改善。

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