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Time series classification based on multi-feature dictionary representation and ensemble learning

机译:基于多重特征词典表示和集合学习的时间序列分类

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Time series classification is an important task for mining time series data, and many high level representations of time series have been proposed to address it. Symbolic Aggregate approXimation (SAX) is a classic high level symbolic representation method which can effectively reduce the dimensionality of time series. However, SAX-based methods for time series classification cannot achieve promising results, because SAX only extracts the mean feature of subsequence to make symbolization. In this paper, we present a novel ensemble method based on SAX called TBOPE, which is based on multi-feature dictionary representation and ensemble learning. Specifically, we first extract both the mean feature and trend feature of time series. Second, we create the histograms of two kinds of feature based on the Bag-of-Feature mode and construct multiple single classifiers. Finally, we build an ensemble classifier to improve the classification performance. Experimental results on various time series datasets have shown that the proposed method is competitive to state-of-the-art methods.
机译:时间序列分类是采矿时间序列数据的重要任务,已经提出了许多时间序列的高级表示来解决它。符号聚合近似(SAX)是一种经典的高级符号表示方法,可以有效地降低时间序列的维度。但是,基于SAX的时间序列分类方法无法达到有希望的结果,因为SAX仅提取后续符号化的平均特征。在本文中,我们提出了一种基于SAX的新型集合方法,称为TBOPE,其基于多重特征词典表示和集合学习。具体地,我们首先提取时间序列的平均特征和趋势特征。其次,我们基于特征袋模式创建两种特征的直方图并构建多个单个分类器。最后,我们构建一个合奏分类器以提高分类性能。在各种时间序列数据集上的实验结果表明,所提出的方法对最先进的方法具有竞争力。

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