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Finding the most unusual time series subsequence: algorithms and applications

机译:寻找最不寻常的时间序列子序列:算法和应用

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In this work we introduce the new problem of finding time seriesdiscords. Time series discords are subsequences of longer time series that are maximally different to all the rest of the time series subsequences. They thus capture the sense of the most unusual subsequence within a time series. While discords have many uses for data mining, they are particularly attractive as anomaly detectors because they only require one intuitive parameter (the length of the subsequence) unlike most anomaly detection algorithms that typically require many parameters. While the brute force algorithm to discover time series discords is quadratic in the length of the time series, we show a simple algorithm that is three to four orders of magnitude faster than brute force, while guaranteed to produce identical results. We evaluate our work with a comprehensive set of experiments on diverse data sources including electrocardiograms, space telemetry, respiration physiology, anthropological and video datasets.
机译:在这项工作中,我们介绍了寻找时间序列不一致的新问题。时间序列不一致是较长时间序列的子序列,与所有其他时间序列子序列最大不同。因此,它们捕获了时间序列中最不寻常的子序列的感觉。尽管不和谐在数据挖掘中有许多用途,但它们作为异常检测器特别吸引人,因为它们仅需要一个直观的参数(子序列的长度),而不同于通常需要许多参数的大多数异常检测算法。虽然发现时间序列不和谐的蛮力算法在时间序列的长度上是二次方的,但我们展示了一种简单的算法,该算法比蛮力要快三到四个数量级,同时可以保证产生相同的结果。我们通过对包括心电图,空间遥测,呼吸生理学,人类学和视频数据集在内的各种数据源进行全面的实验来评估我们的工作。

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