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Learning Pattern Graphs for Multivariate Temporal Pattern Retrieval

机译:多元时间模式检索的学习模式图

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We propose a two-phased approach to learn pattern graphs, a powerful pattern language for complex, multivariate temporal data, which is capable of reflecting more aspects of temporal patterns than earlier proposals. The first phase aims at increasing the understandabil-ity of the graph by finding common substructures, thereby helping the second phase to specialize the graph learned so far to discriminate against undesired situations. The usefulness is shown on data from the automobile industry and the libras data set by taking the accuracy and the knowledge gain of the learned graphs into account.
机译:我们提出了一种两阶段的方法来学习模式图,这是一种用于复杂的多元时间数据的强大模式语言,与早期的提议相比,它能够反映更多的时间模式方面。第一阶段的目的是通过找到常见的子结构来提高图的可理解性,从而帮助第二阶段将到目前为止学到的图专门化,以区分不良情况。通过考虑学习图的准确性和知识增益,在汽车行业数据和天秤数据集上显示了有用性。

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