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ICLR 2023

Recursive Time Series Data Augmentation

Conference Paper Accepted Paper Artificial Intelligence ยท Machine Learning

Abstract

Time series observations can be seen as realizations of an underlying dynamical system governed by rules that we typically do not know. For time series learning tasks we create our model using available data. Training on available realizations, where data is limited, often induces severe over-fitting thereby preventing generalization. To address this issue, we introduce a general recursive framework for time series augmentation, which we call the Recursive Interpolation Method (RIM). New augmented time series are generated using a recursive interpolation function from the original time series for use in training. We perform theoretical analysis to characterize the proposed RIM and to guarantee its performance under certain conditions. We apply RIM to diverse synthetic and real-world time series cases to achieve strong performance over non-augmented data on a variety of learning tasks. Our method is also computationally more efficient and leads to better performance when compared to state of the art time series data augmentation.

Authors

Keywords

  • Time Series
  • Data augmentation
  • Representation Learning
  • Deep Learning
  • Reinforcement Learning

Context

Venue
International Conference on Learning Representations
Archive span
2013-2025
Indexed papers
10294
Paper id
430636295663907358