论文标题
关于时间序列的无监督异常检测的比较研究:实验和分析
A Comparative Study on Unsupervised Anomaly Detection for Time Series: Experiments and Analysis
论文作者
论文摘要
社会过程的持续数字化转化为时间序列数据的扩散,这些数据涵盖了诸如欺诈检测,入侵检测和能量管理等应用程序,在这种应用程序中,异常检测通常对于启用可靠性和安全性至关重要。许多最近的研究针对时间序列数据的异常检测。实际上,时间序列异常检测的特征是不同的数据,方法和评估策略,现有研究中的比较仅考虑了这种多样性的一部分,这使得很难为特定问题设置选择最佳方法。为了解决这一缺点,我们介绍了有关数据,方法和评估策略的分类法,并使用分类法提供了无监督时间序列异常检测的全面概述,并系统地评估和比较了最先进的传统和深度学习技术。在使用九个公开可用数据集的实证研究中,我们将最常用的绩效评估指标应用于公平实施标准下的典型方法。根据分类法提供的结构,我们在经验研究上报告,并以比较表的形式提供指南,以选择最适合特定应用程序设置的方法。最后,我们为这个动态领域提出了研究方向。
The continued digitization of societal processes translates into a proliferation of time series data that cover applications such as fraud detection, intrusion detection, and energy management, where anomaly detection is often essential to enable reliability and safety. Many recent studies target anomaly detection for time series data. Indeed, area of time series anomaly detection is characterized by diverse data, methods, and evaluation strategies, and comparisons in existing studies consider only part of this diversity, which makes it difficult to select the best method for a particular problem setting. To address this shortcoming, we introduce taxonomies for data, methods, and evaluation strategies, provide a comprehensive overview of unsupervised time series anomaly detection using the taxonomies, and systematically evaluate and compare state-of-the-art traditional as well as deep learning techniques. In the empirical study using nine publicly available datasets, we apply the most commonly-used performance evaluation metrics to typical methods under a fair implementation standard. Based on the structuring offered by the taxonomies, we report on empirical studies and provide guidelines, in the form of comparative tables, for choosing the methods most suitable for particular application settings. Finally, we propose research directions for this dynamic field.