Topological data mapping of online hate speech, misinformation, and general mental health: A large language model based study.

IF 7.7
PLOS digital health Pub Date : 2025-07-29 eCollection Date: 2025-07-01 DOI:10.1371/journal.pdig.0000935
Andrew William Alexander, Hongbin Wang
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Abstract

The advent of social media has led to an increased concern over its potential to propagate hate speech and misinformation, which, in addition to contributing to prejudice and discrimination, has been suspected of playing a role in increasing social violence and crimes in the United States. While literature has shown the existence of an association between posting hate speech and misinformation online and certain personality traits of posters, the general relationship and relevance of online hate speech/misinformation in the context of overall psychological wellbeing of posters remain elusive. One difficulty lies in finding data analytics tools capable of adequately analyzing the massive amount of social media posts to uncover the underlying hidden links. Machine learning and large language models such as ChatGPT make such an analysis possible. In this study, we collected thousands of posts from carefully selected communities on the social media site Reddit. We then utilized OpenAI's GPT3 to derive embeddings of these posts, which are high-dimensional real-numbered vectors that presumably represent the hidden semantics of posts. We then performed various machine-learning classifications based on these embeddings in order to identify potential similarities between hate speech/misinformation speech patterns and those of various communities. Finally, a topological data analysis (TDA) was applied to the embeddings to obtain a visual map connecting online hate speech, misinformation, various psychiatric disorders, and general mental health.

网络仇恨言论、错误信息和一般心理健康的拓扑数据映射:基于大型语言模型的研究。
社交媒体的出现引发了人们对其传播仇恨言论和错误信息的担忧,这些言论和错误信息除了助长偏见和歧视之外,还被怀疑在美国社会暴力和犯罪增加中发挥了作用。虽然有文献表明,在网上发表仇恨言论和错误信息与发帖者的某些性格特征之间存在关联,但在发帖者整体心理健康的背景下,网上仇恨言论/错误信息的一般关系和相关性仍然难以理解。其中一个困难在于找到能够充分分析大量社交媒体帖子的数据分析工具,以发现潜在的隐藏链接。机器学习和ChatGPT等大型语言模型使这种分析成为可能。在这项研究中,我们从社交媒体网站Reddit上精心挑选的社区中收集了数千篇帖子。然后,我们利用OpenAI的GPT3来推导这些帖子的嵌入,这些嵌入是高维实数向量,可能代表了帖子的隐藏语义。然后,我们基于这些嵌入进行了各种机器学习分类,以识别仇恨言论/错误信息言论模式与各种社区之间的潜在相似性。最后,将拓扑数据分析(TDA)应用于嵌入,以获得连接在线仇恨言论,错误信息,各种精神疾病和一般心理健康的视觉地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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