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Time series anomaly detection based on shapelet learning

机译:基于Shapelet学习的时间序列异常检测

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We consider the problem of learning to detect anomalous time series from an unlabeled data set, possibly contaminated with anomalies in the training data. This scenario is important for applications in medicine, economics, or industrial quality control, in which labeling is difficult and requires expensive expert knowledge, and anomalous data is difficult to obtain. This article presents a novel method for unsupervised anomaly detection based on the shapelet transformation for time series. Our approach learns representative features that describe the shape of time series stemming from the normal class, and simultaneously learns to accurately detect anomalous time series. An objective function is proposed that encourages learning of a feature representation in which the normal time series lie within a compact hypersphere of the feature space, whereas anomalous observations will lie outside of a decision boundary. This objective is optimized by a block-coordinate descent procedure. Our method can efficiently detect anomalous time series in unseen test data without retraining the model by reusing the learned feature representation. We demonstrate on multiple benchmark data sets that our approach reliably detects anomalous time series, and is more robust than competing methods when the training instances contain anomalous time series.
机译:我们考虑从未标记的数据集检测异常时间序列的问题,可能污染训练数据中的异常。这种情况对于医学,经济学或工业质量控制的应用很重要,其中标签困难并且需要昂贵的专家知识,并且难以获得异常数据。本文提出了一种基于时间序列的Shapelet变换的无监督异常检测方法。我们的方法学习代表性的特征,描述了从正常类中置于正常类的时间序列的形状,并同时学习准确地检测异常时间序列。提出了一种客观函数,促进学习特征表示,其中正常时间序列位于特征空间的紧凑间隔内,而异常观察将位于决策边界之外。该目标通过块坐标血管下降程序进行了优化。我们的方法可以通过重新测量学习特征表示,有效地检测在未经检测的OcseN测试数据中的异常时间序列。我们在多个基准数据集上展示了我们的方法可靠地检测异常时间序列,并且在训练实例包含异常时间序列时比竞争方法更强大。

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