National Institute for Data Science in Health and Medicine, Xiamen University, Xiamen, Fujian, China.
School of Medicine, Xiamen University, Xiamen, Fujian, China.
PLoS One. 2024 Oct 31;19(10):e0312264. doi: 10.1371/journal.pone.0312264. eCollection 2024.
Postgraduate students face various academic, personal, and social stressors that increase their risk of anxiety, depression, and suicide. Identifying cost-effective methods of detecting and intervening before stress turns into severe problems is crucial. However, existing stress detection methods typically rely on psychological scales or devices, which can be complex and expensive. Therefore, we propose a BERT-fused model for rapidly and automatically detecting postgraduate students' psychological stress via social media. First, we construct an improved BERT-LDA feature extraction algorithm to extract group stress features from large-scale and complex social media data. Then, we integrate the BiLSTM-CRF named entity recognition model to construct a multi-dimensional psychological stress profile and analyze the fine-grained feature representation under the fusion of multi-dimensional features. Experimental results demonstrate that the proposed model outperforms traditional models such as BiLSTM, achieving an accuracy of 92.55%, a recall of 93.47%, and an F1-score of 92.18%, with F1-scores exceeding 89% for all three types of entities. This research provides both theoretical and practical foundations for universities or institutions to conduct fine-grained perception and intervention for postgraduate students' psychological stress.
研究生面临各种学术、个人和社会压力源,增加了他们焦虑、抑郁和自杀的风险。确定在压力演变成严重问题之前进行检测和干预的经济有效的方法至关重要。然而,现有的压力检测方法通常依赖于心理量表或设备,这些方法可能复杂且昂贵。因此,我们提出了一种基于 BERT 的融合模型,通过社交媒体快速自动地检测研究生的心理压力。首先,我们构建了一个改进的 BERT-LDA 特征提取算法,从大规模复杂的社交媒体数据中提取群体压力特征。然后,我们集成了名为 BiLSTM-CRF 的命名实体识别模型,构建了一个多维心理压力档案,并分析了多维特征融合下的细粒度特征表示。实验结果表明,所提出的模型优于传统模型,如 BiLSTM,准确率为 92.55%,召回率为 93.47%,F1 得分为 92.18%,对于所有三种类型的实体,F1 得分均超过 89%。这项研究为高校或机构对研究生心理压力进行精细感知和干预提供了理论和实践基础。