Short-Form Videos and Mental Health: A Knowledge-Guided Neural Topic Model
提出一种知识引导的神经主题模型,在视频上传时预测其引发青少年自杀意念的风险,优于现有模型,可用于平台内容审核以保护心理健康。
Short-form video platforms such as TikTok and Douyin are widely used but have sparked serious concerns about their impact on youth mental health, especially suicidal thoughts. This study introduces a novel knowledge-guided neural topic model that predicts a video’s potential to induce suicidal thoughts in viewers at the time of upload. Unlike existing models, our approach integrates medical knowledge on suicide risk factors with user-generated content to improve prediction accuracy and explainability. Tested on real-world data from two major platforms, the model not only outperforms current machine learning and deep learning benchmarks but also uncovers emerging content themes linked to suicidal thought risk. For practice, this tool can be directly integrated into platforms’ content moderation pipelines, identifying high-risk videos for follow-up human review before harm spreads. For policy, it offers a scalable and ethically informed method to mitigate digital risks to youth mental health, balancing user safety with content creator rights. This work offers a critical step forward in responsible AI and public mental health protection in the era of algorithm-driven media.