SomnoNet: A Lightweight and Interpretable Framework for Sleep Staging from Single-Channel EEG
Shengwei Guo, Guobing Sun

TL;DR
SomnoNet is a lightweight, interpretable neural network that accurately classifies sleep stages from single-channel EEG, suitable for portable devices, and offers insights into physiological patterns influencing its decisions.
Contribution
This work introduces SomnoNet, a novel domain-informed neural architecture that combines high accuracy, efficiency, and interpretability for sleep staging from raw EEG data.
Findings
Achieves 80.9% accuracy on SHHS and 88.0% on Physio2018 benchmarks.
Develops SomnoNet-Nano, a model with only 6% of prior parameters, maintaining over 99% accuracy.
Provides physiologically meaningful interpretability analyses of EEG features.
Abstract
Sleep quality is central to human health, yet reliable and scalable sleep assessment remains an unmet challenge in both clinical and home-care settings. Manual scoring is labor-intensive and impractical for long-term monitoring, whereas existing automatic approaches often lack computational efficiency, deployability, and interpretability. Here we present SomnoNet, a domain-informed neural architecture that unifies accurate, lightweight, and interpretable sleep staging. SomnoNet is an end-to-end framework that learns directly from raw single-channel EEG, eliminating hand-crafted preprocessing and achieving state-of-the-art performance on two large-scale benchmarks (80.9\% accuracy on SHHS; 88.0\% on Physio2018). We further develop SomnoNet-Nano, a highly compact variant that achieves an extreme parameter reduction-approximately 6\% of the smallest prior model-while still preserving…
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Taxonomy
TopicsSpeech and Audio Processing · Context-Aware Activity Recognition Systems · IoT-based Smart Home Systems
MethodsSoftmax · Attention Is All You Need
