1 Department of Business Administration in Management Information Systems, International American University, CA 90010, USA.
2 Department of Computer Science, Westcliff University, Irvine, CA, 92614, USA.
3 Department of Management Information System, Pacific State University, CA, 90010, USA.
4 Department of Business Administration and Management, International American University, CA, 90010, USA.
International Journal of Science and Research Archive, 2025, 15(02), 1469–1479
Article DOI: 10.30574/ijsra.2025.15.2.1506
Received on 08 April 2025; revised on 27 May 2025; accepted on 29 May 2025
Adapting sleep stage classification models to new subjects typically requires extensive labeled data. This study presents a transfer learning framework that enables accurate classification with minimal subject-specific data using the Physionet EEG dataset. We develop a base model pre-trained on multiple subjects using both supervised and self-supervised approaches. Various fine-tuning methodologies are compared, including full model tuning, adapter-based approaches, and layer-wise learning rate adjustment. Our few-shot learning implementation successfully adapts to new subjects using only 10-20 labeled segments per sleep stage, achieving 87.3% accuracy compared to 91.8% with full data fine-tuning. The meta-learning approach using model-agnostic meta-learning (MAML) further improves adaptation speed, requiring only 5 gradient steps for optimal performance. For subjects with multiple nights of recordings, our continual learning strategy prevents catastrophic forgetting while incorporating new information. This transfer learning methodology significantly reduces the calibration burden for clinical and home-based sleep monitoring, enabling rapid adaptation to new users with minimal labeled data requirements.
Transfer Learning; Few-Shot Learning; Meta-Learning; Sleep EEG; Personalized Models; Continual Learning
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Farhad Uddin Mahmud, Hamdadur Rahman, Zishad Hossain Limon, Mahbub Alam Khan and Farhan Bin Jashim. Transfer learning approach for sleep stage classification with limited training data. International Journal of Science and Research Archive, 2025, 15(02), 1469–1479. Article DOI: https://doi.org/10.30574/ijsra.2025.15.2.1506.
Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0







