Start
Entdecken
nav.journalClub
Trends
Mehr
synapse
⌘+K
Sprache
Deutsch
Deutsch
March 3, 2026
Analysis of the generalization ability of graph neural networks in cross-subject EEG emotion recognition
LW
Lingyue Wang
LG
Lei Guo
XY
Xinsheng Yang
See all
Key Points
Graph neural networks enhance emotion recognition accuracy in cross-subject EEG data, indicating higher generalization ability.
Performance improved by 15% in novel subject data compared to traditional methods, highlighting the potential of using deep learning.
Analysis of EEG signals involves sophisticated algorithmic models for better interpretation of emotional states.
Implications suggest the need for advancing neural network models for more effective recognition in diverse populations.
Mark Helpful
Like
Save
Bookmark
Relay
Share
Mark Helpful
Like
Save
Bookmark
Relay
Share
Analysis of the generalization ability of graph neural networks in cross-subject EEG emotion recognition | Synapse
Cite This Study
Copy
Wang et al. (Wed,) studied this question.
synapsesocial.com/papers/69a760bbc6e9836116a2dc1b
https://doi.org/https://doi.org/10.1007/s10072-026-08835-6