Retraction

Application of Graph Neural Network in Driving Fatigue Detection Based on EEG Signals

Retraction Details

Nature of Retraction:

Retraction

Retraction Notice:
10.1155/2023/9804560
Additional Notes:

See also: https://pubpeer.com/publications/A1E37D05A5C15012233B468C351FA1

Citations (4)

4
Total Citations
2
Post-Retraction
(50.0%)
1
Pre-Retraction
0
Same Day
Post-Retraction Citation Analysis
0 Within 30 days
2 Within 1 year
0 After 2+ years
166 Days since retraction (latest)
Heavy Metals Removal Using Carbon Based Nanocomposites
Unknown Authors
Unknown Journal
Published: Unknown
Exploring Non-Euclidean Approaches: A Comprehensive Survey on Graph-Based Techniques for EEG Signal Analysis
Harish C. Bhandari, Yagya Raj Pandeya, Kanhaıya Jha et al. (5 authors)
Journal of Advances in Information Technology Open Access
Published: Jan 2024
2 citations
166 days after retraction
Real driving environment EEG-based detection of driving fatigue using the wavelet scattering network
Fuwang Wang, Daping Chen, Wanchao Yao et al. (4 authors)
Journal of Neuroscience Methods
Published: Oct 2023
10 citations
86 days after retraction
Retracted: Application of Graph Neural Network in Driving Fatigue Detection Based on EEG Signals
Computational Intelligence and Neuroscience
Computational Intelligence and Neuroscience Open Access
Published: Jan 2023
1 citation
199 days before retraction
Quick Stats
Total Citations: 6
Years Since Retraction: 2.3 years
Open Access: Yes
Last Checked: Jul 24, 2025
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