Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Towards Diverse and Coherent Augmentation for Time-Series Forecasting

About

Time-series data augmentation mitigates the issue of insufficient training data for deep learning models. Yet, existing augmentation methods are mainly designed for classification, where class labels can be preserved even if augmentation alters the temporal dynamics. We note that augmentation designed for forecasting requires diversity as well as coherence with the original temporal dynamics. As time-series data generated by real-life physical processes exhibit characteristics in both the time and frequency domains, we propose to combine Spectral and Time Augmentation (STAug) for generating more diverse and coherent samples. Specifically, in the frequency domain, we use the Empirical Mode Decomposition to decompose a time series and reassemble the subcomponents with random weights. This way, we generate diverse samples while being coherent with the original temporal relationships as they contain the same set of base components. In the time domain, we adapt a mix-up strategy that generates diverse as well as linearly in-between coherent samples. Experiments on five real-world time-series datasets demonstrate that STAug outperforms the base models without data augmentation as well as state-of-the-art augmentation methods.

Xiyuan Zhang, Ranak Roy Chowdhury, Jingbo Shang, Rajesh Gupta, Dezhi Hong• 2023

Related benchmarks

TaskDatasetResultRank
Activity RecognitionHHAR (test)
Mean F1 Score87.73
46
Activity RecognitionUCIHAR (test)
Macro F1 Score88.91
43
Heart-rate predictionIEEE SPC12
MAE27.44
31
Heart-rate predictionIEEE SPC 22
MAE19.86
12
Heart-rate predictionDaLia
MAE18.7
12
Activity RecognitionUSC (test)
Accuracy55.61
11
Showing 6 of 6 rows

Other info

Follow for update