TimeMAE: Self-Supervised Representations of Time Series with Decoupled Masked Autoencoders
University of Science and Technology of China
Abstract
Learning transferable representations from unlabeled time series is crucial for improving performance in data-scarce classification. Existing self-supervised methods often operate at the point level and rely on unidirectional encoding, leading to low semantic density and a mismatch between pre-training and downstream optimization. In this paper, we propose TimeMAE, a self-supervised framework that reformulates masked modeling for time series via semantic unit elevation and decoupled representation learning. Instead of modeling individual time steps, TimeMAE segments time series into non-overlapping sub-series to form semantically enriched units, enabling more informative masked reconstruction while reducing…
Citation impact
- FWCI
- 120.92
- Percentile
- 100%
- References
- 24
Authors
7- MCMingyue ChengCorresponding
University of Science and Technology of China
- XTXiaoyu Tao
University of Science and Technology of China
- ZLZhiding Liu
University of Science and Technology of China
- QLQi Liu
University of Science and Technology of China
- HZHao Zhang
University of Science and Technology of China
Topics & keywords
- Computer science
- Series (stratigraphy)
- Artificial intelligence
- Autoencoder
- Encoding (memory)
- Encoder
- Transformer
- Deep learning