矩阵概况XII: MPdist:一种新的时间序列距离度量,允许在更具挑战性的场景中进行数据挖掘

Shaghayegh Gharghabi, Shima Imani, A. Bagnall, Amirali Darvishzadeh, Eamonn J. Keogh
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引用次数: 33

摘要

在其核心,许多时间序列数据挖掘算法可以简化为对时间序列子序列的形状进行推理。这需要距离度量,大多数算法使用欧几里得距离或动态时间翘曲(DTW)作为其核心子程序。我们认为,这些距离措施并不像社区认为的那样强大。对这些措施的过度信任源于对基准数据集的过度依赖和自我选择偏差。社区不愿意处理更困难的领域,目前的距离测量不适合这些领域。在这项工作中,我们引入了一种新的距离测量MPdist。我们表明,我们提出的距离度量比当前的距离度量鲁棒得多。此外,它允许我们成功地挖掘数据集,这将击败任何基于欧几里得或DTW距离的算法。此外,我们表明我们的距离测量可以如此有效地计算,它允许对快速流进行分析。
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Matrix Profile XII: MPdist: A Novel Time Series Distance Measure to Allow Data Mining in More Challenging Scenarios
At their core, many time series data mining algorithms can be reduced to reasoning about the shapes of time series subsequences. This requires a distance measure, and most algorithms use Euclidean Distance or Dynamic Time Warping (DTW) as their core subroutine. We argue that these distance measures are not as robust as the community believes. The undue faith in these measures derives from an overreliance on benchmark datasets and self-selection bias. The community is reluctant to address more difficult domains, for which current distance measures are ill-suited. In this work, we introduce a novel distance measure MPdist. We show that our proposed distance measure is much more robust than current distance measures. Furthermore, it allows us to successfully mine datasets that would defeat any Euclidean or DTW distance-based algorithm. Additionally, we show that our distance measure can be computed so efficiently, it allows analytics on fast streams.
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