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On the Discovery of Weak Periodicities in Large Time Series

机译:关于大型时间序列弱周期的发现

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The search for weak periodic signals in time series data is an active topic of research. Given the fact that rarely a real world dataset is perfectly periodic, this paper approaches this problem in terms of data mining, trying to discover weak periodic signals in time series databases, when no period length is known in advance. In existing time series mining algorithms, the period length is user-specified. We propose an algorithm for finding approximate periodicities in large time series data, utilizing autocorrelation function and FFT. This algorithm is an extension to the partial periodicity detection algorithm presented in a previous paper of ours. We provide some mathematical background as well as experimental results.
机译:搜索时间序列数据中的弱周期信号是一个有效的研究主题。鉴于真实世界数据集是完全定期的事实,本文在数据挖掘方面接近了这个问题,试图在时间序列数据库中发现弱周期信号,当没有提前知道时段长度。在现有时间序列挖掘算法中,周期长度是用户指定的。我们提出了一种用于在大型时间序列数据中查找近似周期的算法,利用自相关函数和FFT。该算法是在我们的前一篇文章中呈现的部分周期性检测算法的扩展。我们提供一些数学背景以及实验结果。

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