Zhang Liyuan, Liu Dexi, Li Jing, Wan Changxuan, Liu Xiping
School of Computer and Artificial Intelligence, Jiangxi University of Finance and Economics, Nanchang, 330013, JiangXi, China.
School of Mathematics and Computer, YuZhang Normal College, Nanchang, 330013, Jiangxi, China.
Heliyon. 2024 Sep 20;10(19):e38042. doi: 10.1016/j.heliyon.2024.e38042. eCollection 2024 Oct 15.
With the popularity of online mental health platforms, more individuals are seeking help and receiving social support by openly discussing their problems. Therefore, it's crucial to gain a deeper understanding of which problem disclosures and social support on these platforms can attract more user attention and engagement. Previous research has primarily focused on social media forums. Our work concentrates on the professional mental health platform, intending to understand the linguistic features present in posts that promote user engagement and interaction. We employ text mining and deep learning techniques to analyze posts consisting of 22,250 questions from help-seekers and 78,328 answers providing social support extracted from the Chinese online mental health counseling platform. Initially, we analyze the high-frequency words and topics of the questions and answers to gain insights into the primary focal points and the range of topics covered in these posts. The results indicate that work-related issues are the most concerning and troublesome for help-seekers, and the topics that users follow are approximately 8 types, including growth, family, in-love, marriage, emotions, human-relations, behavioral-therapy and career. Subsequently, we analyze the language usage in question-and-answer posts with different engagement from three aspects: vocabulary categories, linguistic style matching, and language modeling, aiming to identify which linguistic features can attract more user attention and engagement. The results reveal that high-engagement answer posts exhibit a higher degree of linguistic style matching with the corresponding questions, and the use of vocabulary categories also influences the attention and engagement of the posts. By exploring the linguistic features and patterns displayed in posts with different levels of engagement on the professional online mental health platform, this study offers deep insights into user behavior and the factors that impact counseling effectiveness on the platform and provides valuable knowledge for understanding effective user interactions and engagement.
随着在线心理健康平台的普及,越来越多的人通过公开讨论自己的问题来寻求帮助并获得社会支持。因此,深入了解这些平台上哪些问题披露和社会支持能够吸引更多用户关注和参与至关重要。以往的研究主要集中在社交媒体论坛。我们的工作聚焦于专业心理健康平台,旨在了解促进用户参与和互动的帖子中呈现的语言特征。我们运用文本挖掘和深度学习技术,分析了从中国在线心理健康咨询平台提取的由22250个求助者问题和78328个提供社会支持的答案组成的帖子。首先,我们分析问题和答案的高频词汇和主题,以深入了解这些帖子的主要焦点和涵盖的主题范围。结果表明,与工作相关的问题对求助者来说最令人担忧和困扰,用户关注的主题约有8类,包括成长、家庭、恋爱、婚姻、情绪、人际关系、行为疗法和职业。随后,我们从词汇类别、语言风格匹配和语言建模三个方面分析了不同参与度的问答帖子中的语言使用情况,旨在确定哪些语言特征能够吸引更多用户关注和参与。结果显示,高参与度的答案帖子与相应问题的语言风格匹配度更高,词汇类别的使用也会影响帖子的关注度和参与度。通过探索专业在线心理健康平台上不同参与度帖子所展示的语言特征和模式,本研究深入洞察了用户行为以及影响该平台咨询效果的因素,并为理解有效的用户互动和参与提供了有价值的知识。