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A Conflict-aware Evidential Framework for Reliable Sleep Stage Classification

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Multi-view learning has been widely applied for sleep stage classification using multi-modal data. However, existing methods typically assume that different modalities are well-aligned, which is often unattainable in real-world scenarios, thereby compromising the reliability of the staging results. In this paper, we propose ConfSleepNet, a conflict-aware evidential framework that dynamically resolves inter-view conflicts. The framework consists of multi-view evidence extraction and conflict-aware aggregation. In the first phase, it learns category-related evidence from different modalities, which represents the degree of support for individual sleep stages. Considering the inherent characteristics of varying modalities, we propose hybrid category structures for different modalities to promote more reasonable evidence learning. In the second phase, view-specific opinions, including prediction results and uncertainty, are constructed from the learned evidence. Notably, we propose a novel conflict-aware aggregation method that integrates these view-specific opinions into a reliable joint decision. This mechanism can effectively resolve conflicts among opinions and synthesize them into a reliable joint decision. Both theoretical analysis and experimental results demonstrate the effectiveness of ConfSleepNet in sleep staging tasks. The code is available at https://github.com/By4te/ConfSleepNet_ICML2026/.

Yunzhi Tian, Dekui Wang, Qirong Bu, Wei Zhou, Xingxing Hao, Jun Feng• 2026

Related benchmarks

TaskDatasetResultRank
Sleep Stage ClassificationSHHS
F1 Weighted93.4
36
Sleep Stage ClassificationSleepEDF-20--
35
Sleep Stage ClassificationSleepEDF 78
Accuracy (ACC)0.853
34
Multi-view ClassificationPIE
Accuracy (PIE)95.74
24
Multi-view ClassificationHW
Accuracy98.45
24
Multi-view ClassificationCUB
Accuracy95
23
Multi-view ClassificationScene15
Accuracy73.01
7
Sleep Stage ClassificationMASS SS3
Accuracy88.9
7
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