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Main Authors: Ma, Fei, Lin, Han, Xie, Yifan, Ren, Hongwei, Shen, Xiaoyu, Ding, Wenbo, Tian, Qi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.07877
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author Ma, Fei
Lin, Han
Xie, Yifan
Ren, Hongwei
Shen, Xiaoyu
Ding, Wenbo
Tian, Qi
author_facet Ma, Fei
Lin, Han
Xie, Yifan
Ren, Hongwei
Shen, Xiaoyu
Ding, Wenbo
Tian, Qi
contents Emotion recognition from electroencephalography (EEG) signals remains challenging due to high inter-subject variability, limited labeled data, and the lack of interpretable reasoning in existing approaches. While recent multimodal large language models (MLLMs) have advanced emotion analysis, they have not been adapted to handle the unique spatiotemporal characteristics of neural signals. We present E^2-LLM (EEG-to-Emotion Large Language Model), the first MLLM framework for interpretable emotion analysis from EEG. E^2-LLM integrates a pretrained EEG encoder with Qwen-based LLMs through learnable projection layers, employing a multi-stage training pipeline that encompasses emotion-discriminative pretraining, cross-modal alignment, and instruction tuning with chain-of-thought reasoning. We design a comprehensive evaluation protocol covering basic emotion prediction, multi-task reasoning, and zero-shot scenario understanding. Experiments on the dataset across seven emotion categories demonstrate that E^2-LLM achieves excellent performance on emotion classification, with larger variants showing enhanced reliability and superior zero-shot generalization to complex reasoning scenarios. Our work establishes a new paradigm combining physiological signals with LLM reasoning capabilities, showing that model scaling improves both recognition accuracy and interpretable emotional understanding in affective computing.
format Preprint
id arxiv_https___arxiv_org_abs_2601_07877
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle E^2-LLM: Bridging Neural Signals and Interpretable Affective Analysis
Ma, Fei
Lin, Han
Xie, Yifan
Ren, Hongwei
Shen, Xiaoyu
Ding, Wenbo
Tian, Qi
Machine Learning
Artificial Intelligence
Emotion recognition from electroencephalography (EEG) signals remains challenging due to high inter-subject variability, limited labeled data, and the lack of interpretable reasoning in existing approaches. While recent multimodal large language models (MLLMs) have advanced emotion analysis, they have not been adapted to handle the unique spatiotemporal characteristics of neural signals. We present E^2-LLM (EEG-to-Emotion Large Language Model), the first MLLM framework for interpretable emotion analysis from EEG. E^2-LLM integrates a pretrained EEG encoder with Qwen-based LLMs through learnable projection layers, employing a multi-stage training pipeline that encompasses emotion-discriminative pretraining, cross-modal alignment, and instruction tuning with chain-of-thought reasoning. We design a comprehensive evaluation protocol covering basic emotion prediction, multi-task reasoning, and zero-shot scenario understanding. Experiments on the dataset across seven emotion categories demonstrate that E^2-LLM achieves excellent performance on emotion classification, with larger variants showing enhanced reliability and superior zero-shot generalization to complex reasoning scenarios. Our work establishes a new paradigm combining physiological signals with LLM reasoning capabilities, showing that model scaling improves both recognition accuracy and interpretable emotional understanding in affective computing.
title E^2-LLM: Bridging Neural Signals and Interpretable Affective Analysis
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2601.07877