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Main Authors: Nguyen, Viet Cuong, Jain, Mini, Chauhan, Abhijat, Soled, Heather Jaime, Lesmes, Santiago Alvarez, Li, Zihang, Birnbaum, Michael L., Tang, Sunny X., Kumar, Srijan, De Choudhury, Munmun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.02662
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author Nguyen, Viet Cuong
Jain, Mini
Chauhan, Abhijat
Soled, Heather Jaime
Lesmes, Santiago Alvarez
Li, Zihang
Birnbaum, Michael L.
Tang, Sunny X.
Kumar, Srijan
De Choudhury, Munmun
author_facet Nguyen, Viet Cuong
Jain, Mini
Chauhan, Abhijat
Soled, Heather Jaime
Lesmes, Santiago Alvarez
Li, Zihang
Birnbaum, Michael L.
Tang, Sunny X.
Kumar, Srijan
De Choudhury, Munmun
contents Over one in five adults in the US lives with a mental illness. In the face of a shortage of mental health professionals and offline resources, online short-form video content has grown to serve as a crucial conduit for disseminating mental health help and resources. However, the ease of content creation and access also contributes to the spread of misinformation, posing risks to accurate diagnosis and treatment. Detecting and understanding engagement with such content is crucial to mitigating their harmful effects on public health. We perform the first quantitative study of the phenomenon using YouTube Shorts and Bitchute as the sites of study. We contribute MentalMisinfo, a novel labeled mental health misinformation (MHMisinfo) dataset of 739 videos (639 from Youtube and 100 from Bitchute) and 135372 comments in total, using an expert-driven annotation schema. We first found that few-shot in-context learning with large language models (LLMs) are effective in detecting MHMisinfo videos. Next, we discover distinct and potentially alarming linguistic patterns in how audiences engage with MHMisinfo videos through commentary on both video-sharing platforms. Across the two platforms, comments could exacerbate prevailing stigma with some groups showing heightened susceptibility to and alignment with MHMisinfo. We discuss technical and public health-driven adaptive solutions to tackling the "epidemic" of mental health misinformation online.
format Preprint
id arxiv_https___arxiv_org_abs_2407_02662
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Supporters and Skeptics: LLM-based Analysis of Engagement with Mental Health (Mis)Information Content on Video-sharing Platforms
Nguyen, Viet Cuong
Jain, Mini
Chauhan, Abhijat
Soled, Heather Jaime
Lesmes, Santiago Alvarez
Li, Zihang
Birnbaum, Michael L.
Tang, Sunny X.
Kumar, Srijan
De Choudhury, Munmun
Social and Information Networks
Computation and Language
Computers and Society
Over one in five adults in the US lives with a mental illness. In the face of a shortage of mental health professionals and offline resources, online short-form video content has grown to serve as a crucial conduit for disseminating mental health help and resources. However, the ease of content creation and access also contributes to the spread of misinformation, posing risks to accurate diagnosis and treatment. Detecting and understanding engagement with such content is crucial to mitigating their harmful effects on public health. We perform the first quantitative study of the phenomenon using YouTube Shorts and Bitchute as the sites of study. We contribute MentalMisinfo, a novel labeled mental health misinformation (MHMisinfo) dataset of 739 videos (639 from Youtube and 100 from Bitchute) and 135372 comments in total, using an expert-driven annotation schema. We first found that few-shot in-context learning with large language models (LLMs) are effective in detecting MHMisinfo videos. Next, we discover distinct and potentially alarming linguistic patterns in how audiences engage with MHMisinfo videos through commentary on both video-sharing platforms. Across the two platforms, comments could exacerbate prevailing stigma with some groups showing heightened susceptibility to and alignment with MHMisinfo. We discuss technical and public health-driven adaptive solutions to tackling the "epidemic" of mental health misinformation online.
title Supporters and Skeptics: LLM-based Analysis of Engagement with Mental Health (Mis)Information Content on Video-sharing Platforms
topic Social and Information Networks
Computation and Language
Computers and Society
url https://arxiv.org/abs/2407.02662