TY - JOUR
T1 - Hierarchical feature distillation model via dual-stage projections and graph embedding label propagation for emotion recognition
AU - Ren, Chao
AU - Chen, Jinbo
AU - Li, Rui
AU - Chen, Yijiang
AU - Wang, Tianzhi
AU - Zheng, Weihao
AU - Zhang, Xiaowei
AU - Hu, Bin
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2026/3
Y1 - 2026/3
N2 - In multi-source domain adaptation, challenges include negative transfer caused by feature coupling and the inefficiency of pseudo-label generation. This paper develops a multi-source domain adaptive framework for EEG-based recognition (MSGELP), which integrates a two-stage projection matrix decoupling mechanism and graph-embedded label propagation. The method employs a dynamic source selection mechanism that adaptively selects the top-K most similar source domains based on similarity evaluation across target-source domain pairs, while eliminating latent sources of negative transfer. At the feature decoupling level, a learnable two-stage projection matrix, including a global projection matrix and an alignment projection matrix, is designed to explicitly separate cross-domain knowledge: the global projection matrix extracts common feature spanning multiple domains, while the alignment projection matrix captures domain-specific feature of source-target pairs, preserving discriminative information while avoiding feature entanglement. Furthermore, by constructing a similarity graph of source-target domain pairs and iteratively propagating labels, graph embedding techniques, along with iterative updates to the projection matrices, achieve continuous cross-domain knowledge distillation, effectively improving pseudo-label generation accuracy. Finally, rigorous testing of the cross-subject leave-one-subject-out cross-validation strategy on the SEED-IV and SEED-V datasets achieved classification accuracies of 68.70 % and 63.09 %, respectively. Experimental results indicate that the MSGELP effectively learns a shared subspace, mitigates the negative transfer problem, and outperforms state-of-the-art methods. The code is available at http://github.com/czihan1022/MSGELP/.
AB - In multi-source domain adaptation, challenges include negative transfer caused by feature coupling and the inefficiency of pseudo-label generation. This paper develops a multi-source domain adaptive framework for EEG-based recognition (MSGELP), which integrates a two-stage projection matrix decoupling mechanism and graph-embedded label propagation. The method employs a dynamic source selection mechanism that adaptively selects the top-K most similar source domains based on similarity evaluation across target-source domain pairs, while eliminating latent sources of negative transfer. At the feature decoupling level, a learnable two-stage projection matrix, including a global projection matrix and an alignment projection matrix, is designed to explicitly separate cross-domain knowledge: the global projection matrix extracts common feature spanning multiple domains, while the alignment projection matrix captures domain-specific feature of source-target pairs, preserving discriminative information while avoiding feature entanglement. Furthermore, by constructing a similarity graph of source-target domain pairs and iteratively propagating labels, graph embedding techniques, along with iterative updates to the projection matrices, achieve continuous cross-domain knowledge distillation, effectively improving pseudo-label generation accuracy. Finally, rigorous testing of the cross-subject leave-one-subject-out cross-validation strategy on the SEED-IV and SEED-V datasets achieved classification accuracies of 68.70 % and 63.09 %, respectively. Experimental results indicate that the MSGELP effectively learns a shared subspace, mitigates the negative transfer problem, and outperforms state-of-the-art methods. The code is available at http://github.com/czihan1022/MSGELP/.
KW - EEG
KW - Emotion recognition
KW - Label propagation
KW - Transfer learning
UR - http://www.scopus.com/pages/publications/105010839514
U2 - 10.1016/j.patcog.2025.112143
DO - 10.1016/j.patcog.2025.112143
M3 - Article
AN - SCOPUS:105010839514
SN - 0031-3203
VL - 171
JO - Pattern Recognition
JF - Pattern Recognition
M1 - 112143
ER -