论文标题
深度学习时间序列数据的增强:调查
Time Series Data Augmentation for Deep Learning: A Survey
论文作者
论文摘要
深度学习最近在许多时间序列分析任务上表现出色。深度神经网络的出色表现在很大程度上取决于大量的培训数据,以避免过度拟合。但是,许多实际时间序列应用程序的标记数据可能受到限制,例如医疗时间序列中的分类和AIOPS中的异常检测。作为提高培训数据规模和质量的有效方法,数据增强对于成功应用深度学习模型在时间序列数据上至关重要。在本文中,我们系统地回顾了时间序列的不同数据增强方法。我们为审查方法提出了分类法,然后通过突出其优势和局限性来为这些方法提供结构化审查。我们还从经验上比较了不同任务的不同数据增强方法,包括时间序列分类,异常检测和预测。最后,我们讨论并突出了未来的五个方向,以提供有用的研究指导。
Deep learning performs remarkably well on many time series analysis tasks recently. The superior performance of deep neural networks relies heavily on a large number of training data to avoid overfitting. However, the labeled data of many real-world time series applications may be limited such as classification in medical time series and anomaly detection in AIOps. As an effective way to enhance the size and quality of the training data, data augmentation is crucial to the successful application of deep learning models on time series data. In this paper, we systematically review different data augmentation methods for time series. We propose a taxonomy for the reviewed methods, and then provide a structured review for these methods by highlighting their strengths and limitations. We also empirically compare different data augmentation methods for different tasks including time series classification, anomaly detection, and forecasting. Finally, we discuss and highlight five future directions to provide useful research guidance.