论文标题

通过深度学习的时间序列中的自动更改点检测

Automatic Change-Point Detection in Time Series via Deep Learning

论文作者

Li, Jie, Fearnhead, Paul, Fryzlewicz, Piotr, Wang, Tengyao

论文摘要

由于没有更改时,数据中检测数据中的变更点是具有挑战性的。检测更改的统计高效方法将取决于这两个功能,并且对于从业者来说,很难为他们的利益应用开发适当的检测方法。我们展示了如何基于训练神经网络自动生成新的离线检测方法。我们的方法是由许多现有测试的动机,该测试是通过简单的神经网络代表的变更点的存在,因此,接受足够数据的神经网络至少具有与这些方法一样好的性能。我们提出的理论量化了这种方法的错误率,以及它如何取决于培训数据的量。经验结果表明,即使训练数据有限,它的性能也具有标准基于Cusum的分类器的竞争力,用于检测噪声独立且高斯时的平均值变化,并且在存在自动相关或重尾噪声的情况下可以大大优于它。我们的方法还显示了基于加速度计数据的活动的检测和局部变化的强劲结果。

Detecting change-points in data is challenging because of the range of possible types of change and types of behaviour of data when there is no change. Statistically efficient methods for detecting a change will depend on both of these features, and it can be difficult for a practitioner to develop an appropriate detection method for their application of interest. We show how to automatically generate new offline detection methods based on training a neural network. Our approach is motivated by many existing tests for the presence of a change-point being representable by a simple neural network, and thus a neural network trained with sufficient data should have performance at least as good as these methods. We present theory that quantifies the error rate for such an approach, and how it depends on the amount of training data. Empirical results show that, even with limited training data, its performance is competitive with the standard CUSUM-based classifier for detecting a change in mean when the noise is independent and Gaussian, and can substantially outperform it in the presence of auto-correlated or heavy-tailed noise. Our method also shows strong results in detecting and localising changes in activity based on accelerometer data.

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