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Pattern Graphs: Combining Multivariate Time Series and Labelled Interval Sequences for Classification

机译:模式图:组合多元时间序列和标记的分类间隔序列

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Classifying multivariate time series is often dealt with by transforming the numeric series into labelled intervals, because many pattern representations exist to deal with labelled intervals. Finding the right preprocessing is not only time consuming but also critical for the success of the learning algorithms. In this paper we show how pattern graphs, a powerful pattern language for temporal classification rules, can be extended in order to handle labelled intervals in combination with the raw time series. We thereby reduce dependence on the quality of the preprocessing and at the same time increase performance. These benefits are demonstrated experimentally on 10 different data sets.
机译:通过将数字系列转换为标记的间隔来进行分类多变量时间序列通常会处理,因为存在许多模式表示来处理标记的间隔。找到正确的预处理不仅耗时,而且对于学习算法的成功也至关重要。在本文中,我们可以扩展模式图,是如何扩展时间分类规则的强大模式语言,以便与原始时间序列相结合处理标记的间隔。从而减少对预处理质量的依赖性,同时增加性能。在通过10个不同的数据集上通过实验证明这些益处。

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