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arxiv 2402.02475 v2 pith:KKU2T7HF submitted 2024-02-04 cs.LG

TimeSiam: A Pre-Training Framework for Siamese Time-Series Modeling

classification cs.LG
keywords pre-trainingseriestemporaltimesiamtimecorrelationsmodelingsiamese
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Time series pre-training has recently garnered wide attention for its potential to reduce labeling expenses and benefit various downstream tasks. Prior methods are mainly based on pre-training techniques well-acknowledged in vision or language, such as masked modeling and contrastive learning. However, randomly masking time series or calculating series-wise similarity will distort or neglect inherent temporal correlations crucial in time series data. To emphasize temporal correlation modeling, this paper proposes TimeSiam as a simple but effective self-supervised pre-training framework for Time series based on Siamese networks. Concretely, TimeSiam pre-trains Siamese encoders to capture intrinsic temporal correlations between randomly sampled past and current subseries. With a simple data augmentation method (e.g.~masking), TimeSiam can benefit from diverse augmented subseries and learn internal time-dependent representations through a past-to-current reconstruction. Moreover, learnable lineage embeddings are also introduced to distinguish temporal distance between sampled series and further foster the learning of diverse temporal correlations. TimeSiam consistently outperforms extensive advanced pre-training baselines, demonstrating superior forecasting and classification capabilities across 13 standard benchmarks in both intra- and cross-domain scenarios.

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Cited by 2 Pith papers

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  1. Deep Time Series Models: A Comprehensive Survey and Benchmark

    cs.LG 2024-07 unverdicted novelty 7.0

    This survey and benchmark of deep time series models using the released TSLib library finds that models with specific structures perform well only on distinct analysis tasks.

  2. Physical activities enable scalable foundation modelling for broad-spectrum health prediction

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    A 3.4M-parameter foundation model pre-trained on step-count data alone achieves best AUROC on 20 of 21 health risk prediction tasks across multiple devices, regions, and diseases.