Finding People with Emotional Distress in Online Social Media: A Design Combining Machine Learning and Rule-Based Classification

MIS Q. Pub Date : 2020-06-01 DOI:10.25300/MISQ/2020/14110
M. Chau, Tim M. H. Li, P. Wong, J. Xu, P. Yip, Hsinchun Chen
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引用次数: 45

Abstract

Many people face problems of emotional distress. Early detection of high-risk individuals is the key to prevent suicidal behavior. There is increasing evidence that the Internet and social media provide clues of people’s emotional distress. In particular, some people leave messages showing emotional distress or even suicide notes on the Internet. Identifying emotionally distressed people and examining their posts on the Internet are important steps for health and social work professionals to provide assistance, but the process is very time-consuming and ineffective if conducted manually using standard search engines. Following the design science approach, we present the design of a system called KAREN, which identifies individuals who blog about their emotional distress in the Chinese language, using a combination of machine learning classification and rule-based classification with rules obtained from experts. A controlled experiment and a user study were conducted to evaluate system performance in searching and analyzing blogs written by people who might be emotionally distressed. The results show that the proposed system achieved better classification performance than the benchmark methods and that professionals perceived the system to be more useful and effective for identifying bloggers with emotional distress than benchmark approaches.
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在在线社交媒体中寻找情绪困扰的人:一种结合机器学习和基于规则的分类的设计
许多人都面临着情绪困扰的问题。早期发现高危人群是预防自杀行为的关键。越来越多的证据表明,互联网和社交媒体为人们的情绪困扰提供了线索。特别是,一些人在网上留下情绪困扰的信息,甚至是自杀遗书。识别情绪低落的人并检查他们在互联网上的帖子是健康和社会工作专业人员提供帮助的重要步骤,但如果使用标准搜索引擎手动进行,这个过程非常耗时且无效。遵循设计科学的方法,我们提出了一个名为KAREN的系统的设计,该系统使用机器学习分类和基于规则的分类与专家获得的规则相结合,识别用中文写博客的个人情绪困扰。我们进行了一项对照实验和一项用户研究,以评估系统在搜索和分析可能情绪低落的人写的博客方面的性能。结果表明,该系统比基准方法取得了更好的分类性能,专业人员认为该系统比基准方法更有用和有效地识别有情绪困扰的博主。
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