基于nlp的情绪分析对在线社交平台上抑郁高风险群体互动效应的实证研究

Yi Xiao , Yutong Yang , Haozhe Xu , Shijuan Li
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引用次数: 0

摘要

随着数字技术的普及和社交媒体的日益普及,一些高抑郁风险的用户选择在网络社区寻求安慰、接受和帮助。然而,现有的研究在群体,特别是亚文化群体的细分方面存在不足。通过使用爬虫和ERNIE 3.0-Base模型对2023年1月至3月期间新浪微博上的“超级标签”和“树洞”群体进行情感分析,研究揭示了不同的情感特征和互动模式,揭示了互动指标与情感水平之间的显著相关性。研究结果表明,虽然两个社区之间的情绪水平没有显著差异,但“树洞”社区表现出更大的情绪变化。此外,该研究还发现,互动行为与情绪状态密切相关,强调了理解在线互动与心理健康之间复杂动态关系的重要性。这些见解有助于在在线平台上为有抑郁风险的个人开发更有效的支持机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical insights into the interaction effects of groups at high risk of depression on online social platforms with NLP-based sentiment analysis
With the proliferation of digital technology and the increasing prevalence of social media, some users at high risk of depression have opted to seek solace, acceptance, and assistance in online communities. However, the extant research is deficient in terms of the segmentation of groups, particularly subcultural groups. By analyzing the “Super Hashtags” and “Tree Hole” groups on Sina Weibo from January to March 2023 using a crawler and the ERNIE 3.0-Base model for sentiment analysis, the study uncovers distinct sentiment profiles and interaction patterns, revealing significant correlations between interaction metrics and sentiment levels. The findings indicate that while there are no significant differences in sentiment levels between the two communities, the “Tree Hole” community exhibits greater sentiment variability. Moreover, the study identifies that interaction behaviors are closely linked to sentiment states, emphasizing the importance of understanding the complex dynamics between online interactions and mental well-being. These insights contribute to the development of more effective support mechanisms within online platforms for individuals at risk of depression.
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来源期刊
Data and information management
Data and information management Management Information Systems, Library and Information Sciences
CiteScore
3.70
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0.00%
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审稿时长
55 days
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