利用机器学习对 Twitter 消息中的自杀意念严重程度进行分类

Pantaporn Benjachairat , Twittie Senivongse , Nattasuda Taephant , Jiratchaya Puvapaisankit , Chonlakorn Maturosjamnan , Thanakorn Kultananawat
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引用次数: 0

摘要

抑郁症已成为泰国的一个主要心理健康问题,并可能导致自杀倾向。由于自杀意念的强度可能不同,并可能导致自杀企图,因此应及早发现自杀意念的严重程度。本研究提出了预测自杀意念严重程度的文本分类模型。研究人员使用泰语 Twitter 消息数据集开发了多个分类模型。此外,还开发了一个网络应用程序原型,用于预测自杀意念的严重程度,并向用户介绍基于认知行为疗法的自我疗法,以管理消极的自动想法。该应用原型在用户体验评估中获得了令人满意的反馈。这项研究的结果凸显了在心理健康支持不足的社会环境中,社会技术系统帮助进行早期自杀意念检测和早期治疗的重要性和必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classification of suicidal ideation severity from Twitter messages using machine learning

Classification of suicidal ideation severity from Twitter messages using machine learning

Depression has become a major mental health problem in Thailand and can lead to suicidal ideation. As suicidal ideation may vary in intensity and lead to suicide attempts, early detection of suicidal ideation severity should be implemented. This research presents text classification models for the prediction of suicidal ideation severity. A dataset of Twitter messages in Thai was used to develop several classification models. A web application prototype was also developed to predict suicidal ideation severity and introduce self-therapy based on Cognitive Behavioral Therapy to its users for managing negative automatic thoughts. The application prototype received satisfactory feedback during the user experience assessment. The results of this research highlight the importance and need for socio-technical systems to help with early suicidal ideation detection and early therapy in the social environment where mental health support is inadequate.

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