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An Empirical Survey of Data Augmentation for Time Series Classification with Neural Networks

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In recent times, deep artificial neural networks have achieved many successes in pattern recognition. Part of this success can be attributed to the reliance on big data to increase generalization. However, in the field of time series recognition, many datasets are often very small. One method of addressing this problem is through the use of data augmentation. In this paper, we survey data augmentation techniques for time series and their application to time series classification with neural networks. We propose a taxonomy and outline the four families in time series data augmentation, including transformation-based methods, pattern mixing, generative models, and decomposition methods. Furthermore, we empirically evaluate 12 time series data augmentation methods on 128 time series classification datasets with six different types of neural networks. Through the results, we are able to analyze the characteristics, advantages and disadvantages, and recommendations of each data augmentation method. This survey aims to help in the selection of time series data augmentation for neural network applications.

Brian Kenji Iwana, Seiichi Uchida• 2020

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingTourism Quarterly
MASE1.591
58
Time Series ForecastingM1 Monthly
MASE0.968
46
Time Series ForecastingM3 Quarterly
MASE1.159
42
Time Series ForecastingM3 Monthly
MASE0.773
42
Time Series ForecastingTourism Monthly
MASE1.208
42
Time-series classificationUCR 30
Mean Accuracy (UCR 30)79.3
21
Multivariate Time Series ClassificationUEA 10
Accuracy61.2
17
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