使用机器学习分类器检测Twitter推文中的抑郁症

Shruthi K Kumar, Nanditha Dinesh, Nitha L
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引用次数: 0

摘要

用户越来越多地使用社交媒体来分享他们的想法和感受。自杀率较高的主要原因之一是“抑郁”。用户最近的社交媒体状态显示了他们的心理健康信息,以及他们目前的情况和行为。为了确定如何利用社交媒体来评估用户的心理健康,人们进行了各种研究,结果令人印象深刻。这是通过检查表达的观点、形象、态度、语言风格和其他活动来完成的。本研究将使用推特用户上传的推文来检测抑郁症。他们使用了五种机器学习算法来区分抑郁和非抑郁的推文。支持向量机、决策树、随机森林、CNN和朴素贝叶斯都是机器学习算法的例子。最后,决策树分类器的准确率为85.00%,精确度为81.25%,召回率为90.00,f1因子为82.90%,超过了所有经过检验和评估的方法。本研究可为智能系统开发人员在用户心理状态检测领域的工作奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depression Detection in Twitter Tweets Using Machine Learning Classifiers
Users are increasingly using social media to share their thoughts and feelings. One of the primary causes of higher suicide rates is 'depression.' A user’s social media status recently revealed information on their mental health, as well as their current circumstances and actions. Various studies have been conducted to determine how social media may be used to assess a user’s mental health, and the results have been impressive. This is accomplished by the examination of expressed views, images, attitudes, language style, and other activities. The uploaded tweets from Twitter users will be used in this study to detect depressions. Five machine learning algorithms were employed to discriminate between depressed and non-depressed tweets. Support Vector Machine, Decision Tree, Random Forest, CNN, and Naive Bayes are all examples of machine learning algorithms. Finally, with 85.00 percent accuracy, 81.25 percent precision, 90.00 percent recall, and 82.90 percent f1-factor, Decision Tree Classifier exceeds all of the examined and evaluated approaches. This research can serve as a foundation for intelligent system developers working in the field of detecting user mental states.
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