Sleep research article

Rethinking Random Transformers as Adaptive Sequence Smoothers for Sleep Staging

2026-05-11 · arXiv: 2605.09905

Authors: Guisong Liu , Xin Gao , Martin Dresler , Jiansong Zhang , Pengfei Wei

One-line summary

A sleep science research article on Rethinking Random Transformers as Adaptive Sequence Smoothers for Sleep Staging.

Sleep health notes

Sleep health notes will be added by the Sleepatch editorial team.

中文解读

中文解读待补充:本站会优先为失眠研究、睡眠质量改善、昼夜节律等高价值睡眠研究添加中文说明。

Original abstract

Automatic sleep staging commonly adopts Transformers under the assumption that they learn complex long-range dependencies. We challenge this view by revealing a neglected property of sleep sequences: strong local temporal continuity. We show that a randomly initialized Transformer, without any training, substantially improves sleep staging performance and consistently outperforms heuristic smoothing. We formalize this effect via a Random Attention Prior Kernel (RAPK), showing that random self-attention acts as an adaptive smoother by balancing global averaging and content-based similarity while preserving stage transitions. Using two metrics, the Local Smoothness Influence Index (LSII) and the Weighted Transition Entropy (WTE), we provide evidence that most performance gains in Transformer-based sleep staging arise from architectural inductive bias rather than parameter learning. Our results suggest that sleep staging can be effectively addressed with structure-driven smoothing mechanisms rather than complex dependency modeling, enabling more efficient and edge-deployable healthcare systems for large-scale physiological monitoring.

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This content is provided for informational and educational purposes only and does not constitute medical advice, diagnosis, or treatment. Sleep disorders, chronic insomnia, sleep apnea, and other conditions must be evaluated and treated by a qualified healthcare professional. If you experience persistent or severe sleep problems, consult a licensed physician or sleep specialist. Research cited refers to peer-reviewed studies; individual results may vary. Sleepatch does not endorse any specific medication, supplement, or therapy.

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