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Analyzing time-series data by fuzzy data-mining technique

机译:用模糊数据挖掘技术分析时间序列数据

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Time series analysis has always been an important and interesting research field due to its frequent appearance in different applications. In this paper, we attempt to use the data mining technique to analyze time series. Many previous studies on data mining have focused on handling binary-valued data. Time series data, however, are usually quantitative values. We thus extend our previous fuzzy mining approach for handling time-series data to find linguistic association rules. The proposed approach first uses a sliding window to generate continues subsequences from a given time series and then analyzes the fuzzy itemsets from these subsequences. Appropriate post-processing is then performed to remove redundant patterns. Experiments are also made to show the performance of the proposed mining algorithm. Since the final results are represented by linguistic rules, they are friendlier to human than quantitative representation.
机译:时间序列分析由于经常出现在不同的应用程序中,因此一直是重要而有趣的研究领域。在本文中,我们尝试使用数据挖掘技术来分析时间序列。以前有关数据挖掘的许多研究都集中在处理二进制值的数据上。但是,时间序列数据通常是定量值。因此,我们扩展了先前的模糊挖掘方法来处理时间序列数据,以找到语言关联规则。所提出的方法首先使用滑动窗口从给定的时间序列生成连续子序列,然后从这些子序列分析模糊项集。然后执行适当的后处理以去除多余的图案。实验还表明了所提出的挖掘算法的性能。由于最终结果由语言规则表示,因此与定量表示相比,它们对人类更友好。

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