深度学习在评估心理健康文本支持服务对话中的新应用

Daniel Cahn , Sarah Yeoh , Lakshya Soni , Ariele Noble , Mark A. Ungless , Emma Lawrance , Ovidiu Şerban
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引用次数: 0

摘要

Shout 文本支持服务通过匿名文本对话为遭受心理健康困扰的个人提供支持。作为 Shout 数据集的首批研究项目之一,也是将高级深度学习应用于短信服务的首批重要尝试之一,该项目是一个概念验证,展示了将深度学习应用于短信的潜力。Shout 感兴趣的几个领域是识别短信发送者的特征、强调自杀风险高的参与者以及了解哪些对话对短信发送者有帮助。因此,从心理健康的角度来看,我们关注的是:(1)严格根据整个对话中使用的词汇来描述发短信者的人口统计学特征;(2)预测个人的自杀或自残风险;以及(3)通过开发可靠的结果指标来评估对话是否成功。为了实现这些目标,我们使用对话后调查的数据训练了一系列机器学习模型,以预测不同程度的自杀风险、对话是否有帮助以及发短信者的特征(如人口统计信息)。结果表明,基于深度学习的语言模型大大提高了对这一高度主观性数据集的理解。我们将传统方法和基本元特征与基于 Transformer 架构的最新发展进行了比较,并展示了心理健康研究的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel application of deep learning to evaluate conversations from a mental health text support service
The Shout text support service supports individuals experiencing mental health distress through anonymous text conversations. As one of the first research projects on the Shout dataset and one of the first significant attempts to apply advanced deep learning to a text messaging service, this project is a proof-of-concept demonstrating the potential of using deep learning to text messages. Several areas of interest to Shout are identifying texter characteristics, emphasising high suicide-risk participants, and understanding what can make conversations helpful to texters. Therefore, from a mental health perspective, we look at (1) characterising texter demographics strictly based on the vocabulary used throughout the conversation, (2) predicting an individual’s risk of suicide or self-harm, and (3) assessing conversation success by developing robust outcome metrics. To fulfil these aims, a series of Machine Learning models were trained using data from post-conversation surveys to predict the different levels of suicide risk, whether a conversation was helpful, and texter characteristics, such as demographic information. The results show that language models based on Deep Learning significantly improve understanding of this highly subjective dataset. We compare traditional methods and basic meta-features with the latest developments in Transformer-based architectures and showcase the advantages of mental health research.
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