English

Symbol-Temporal Consistency Self-supervised Learning for Robust Time Series Classification

Machine Learning 2025-09-25 v1

Abstract

The surge in the significance of time series in digital health domains necessitates advanced methodologies for extracting meaningful patterns and representations. Self-supervised contrastive learning has emerged as a promising approach for learning directly from raw data. However, time series data in digital health is known to be highly noisy, inherently involves concept drifting, and poses a challenge for training a generalizable deep learning model. In this paper, we specifically focus on data distribution shift caused by different human behaviors and propose a self-supervised learning framework that is aware of the bag-of-symbol representation. The bag-of-symbol representation is known for its insensitivity to data warping, location shifts, and noise existed in time series data, making it potentially pivotal in guiding deep learning to acquire a representation resistant to such data shifting. We demonstrate that the proposed method can achieve significantly better performance where significant data shifting exists.

Keywords

Cite

@article{arxiv.2509.19654,
  title  = {Symbol-Temporal Consistency Self-supervised Learning for Robust Time Series Classification},
  author = {Kevin Garcia and Cassandra Garza and Brooklyn Berry and Yifeng Gao},
  journal= {arXiv preprint arXiv:2509.19654},
  year   = {2025}
}

Comments

4 pages, 2 figures, IEEE-EMBS BSN 2025

R2 v1 2026-07-01T05:53:18.699Z