DAMSDAN: Distribution-Aware Multi-Source Domain Adaptation Network for Cross-Domain EEG-based Emotion Recognition
Fo Hu, Can Wang, Qinxu Zheng, Xusheng Yang, Bin Zhou, Gang Li, Yu Sun, Wen-an Zhang

TL;DR
DAMSDAN is a novel neural network that improves cross-domain EEG emotion recognition by dynamically modeling distribution differences, reweighting sources, and ensuring semantic consistency for better class discrimination.
Contribution
It introduces a distribution-aware multi-source domain adaptation framework combining prototype constraints, adversarial learning, and a source weighting strategy for EEG emotion recognition.
Findings
Achieves high accuracy on SEED and SEED-IV datasets.
Outperforms existing methods in cross-subject and cross-session tasks.
Demonstrates robustness on large-scale FACED dataset.
Abstract
Significant inter-individual variability limits the generalization of EEG-based emotion recognition under cross-domain settings. We address two core challenges in multi-source adaptation: (1) dynamically modeling distributional heterogeneity across sources and quantifying their relevance to a target to reduce negative transfer; and (2) achieving fine-grained semantic consistency to strengthen class discrimination. We propose a distribution-aware multi-source domain adaptation network (DAMSDAN). DAMSDAN integrates prototype-based constraints with adversarial learning to drive the encoder toward discriminative, domain-invariant emotion representations. A domain-aware source weighting strategy based on maximum mean discrepancy (MMD) dynamically estimates inter-domain shifts and reweights source contributions. In addition, a prototype-guided conditional alignment module with dual…
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Taxonomy
TopicsEmotion and Mood Recognition · EEG and Brain-Computer Interfaces · Domain Adaptation and Few-Shot Learning
