Journal Paper Published
Study
Experience and Opportunities
| Chen, H., Zeng, W.*, Chen, C., Cai, L., Wang, F., Shi, Y., Wang, L., Zhang, W., Li, Y., Yan, H., Siok, W. T., & Wang, N.* (2025). EEG Emotion Copilot: Optimizing Lightweight LLMs for Emotional EEG Interpretation with Assisted Medical Record Generation. Neural Networks, 192, 107848. |
| DOI: https://doi.org/10.1016/j.neunet.2025.107848 |
|
|
|
Abstract In the fields of affective computing (AC) and brain-computer interface (BCI), the analysis of physiological and behavioral signals to discern individual emotional states has emerged as a critical research frontier. While deep learning-based approaches have made notable strides in EEG emotion recognition, particularly in feature extraction and pattern recognition, significant challenges persist in achieving end-to-end emotion computation, including rapid processing, individual adaptation, and seamless user interaction. This paper presents the EEG Emotion Copilot, a system optimizing a lightweight large language model (LLM) with 0.5B parameters operating in a local setting, which first recognizes emotional states directly from EEG signals, subsequently generates personalized diagnostic and treatment suggestions, and finally supports the automation of assisted electronic medical records. Specifically, we demonstrate the critical techniques in the novel data structure of prompt, model pruning and fine-tuning training, and deployment strategies aiming at improving performance and computational efficiency. Extensive experiments show that our optimized lightweight LLM-based copilot achieves an enhanced intuitive interface for participant interaction, superior accuracy of emotion recognition and assisted electronic medical records generation, in comparison to such models with similar scale parameters or large-scale parameters such as 1.5B, 1.8B, 3B and 7B. In summary, through these efforts, the proposed copilot is expected to advance the application of AC in the medical domain, offering innovative solution to mental health monitoring. The codes will be released at https://github.com/NZWANG/EEG_Emotion_Copilot. |
|
Keywords
Lightweight LLM, Model pruning, Model fine-tuning, Emotion recognition, Assisted electronic medical record
|
We use Cookies to give you a better experience on our website. By continuing to browse the site without changing your privacy settings, you are consenting to our use of Cookies. For more information, please see our Privacy Policy Statement.
Your browser is not the latest version. If you continue to browse our website, Some pages may not function properly.
You are recommended to upgrade to a newer version or switch to a different browser. A list of the web browsers that we support can be found here