时间序列数据变化点检测方法的比较研究

Aditya Pushkar, Muktesh Gupta, Rajesh Wadhvani, Manasi Gyanchandani
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引用次数: 2

摘要

时间序列数据是按时间顺序索引的有规则时间间隔的数据点序列。它也被称为时间戳数据。这些顺序数据特征可能在过程中发生变化。时间序列数据中的变化点是数据统计性质的实质性变化。许多应用程序依赖于这些变化的检测来进行适当的建模和预测。在变化点检测(CPD)算法的帮助下,可以监视许多重要的活动,并可以采取适当的行动作为响应。时间序列中CPD的检测方法有很多种,分为有监督和无监督两类。这项比较研究比较了所有已经发表在文献中的算法。本文还对许多基于深度学习结果的新算法进行了评估。最后,我们提出了一些值得社区思考的挑战。
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A Comparative Study on Change-Point Detection Methods in Time Series Data
The Time-series data is a sequence of data points at regular time intervals indexed in time order. It is also known as time-stamped data. These sequential data characteristics might change during the process. Change points in time series data are substantial statistical property changes in the data. Many applications rely on the detection of these changes for appropriate modeling and prediction. Many vital activities can be monitored with the help of Change-Point Detection (CPD) algorithms, and appropriate actions can be made as a response. There are a variety of methods for detecting CPD in time series, which are divided into supervised and unsupervised categories. This comparative study compares all of the algorithms that have been published in the literature. Many novel algorithms based on the results of deep learning are also evaluated. Finally, we give the community some challenges to ponder.
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