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Group Resonance Network: Learnable Prototypes and Multi-Subject Resonance for EEG Emotion Recognition

arXiv cs.LG / 3/13/2026

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Key Points

  • The paper introduces the Group Resonance Network (GRN) for EEG emotion recognition to address cross-subject variability by integrating individual EEG dynamics with offline group resonance modeling.
  • GRN comprises three components: an individual encoder for band-wise EEG features, a set of learnable group prototypes for prototype-induced resonance, and a multi-subject resonance branch that encodes PLV/coherence-based synchrony with a small reference set.
  • A resonance-aware fusion module combines individual and group-level representations for final classification.
  • Experiments on SEED and DEAP under subject-dependent and leave-one-subject-out protocols show GRN consistently outperforms competitive baselines, with ablation studies confirming the complementary benefits of prototype learning and multi-subject resonance modeling.

Abstract

Electroencephalography(EEG)-basedemotionrecognitionre- mains challenging in cross-subject settings due to severe inter-subject variability. Existing methods mainly learn subject-invariant features, but often under-exploit stimulus-locked group regularities shared across sub- jects. To address this issue, we propose the Group Resonance Network (GRN), which integrates individual EEG dynamics with offline group resonance modeling. GRN contains three components: an individual en- coder for band-wise EEG features, a set of learnable group prototypes for prototype-induced resonance, and a multi-subject resonance branch that encodes PLV/coherence-based synchrony with a small reference set. A resonance-aware fusion module combines individual and group-level rep- resentations for final classification. Experiments on SEED and DEAP under both subject-dependent and leave-one-subject-out protocols show that GRN consistently outperforms competitive baselines, while abla- tion studies confirm the complementary benefits of prototype learning and multi-subject resonance modeling.