从推特和临床测试中检测抑郁症

Sarthak Maniar, Kaustubh K. Patil, B. Rao, R. Shankarmani
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引用次数: 0

摘要

社交媒体在这一代人中已经成为一个巨大的浪潮,每个人都可以与他人交流,它一方面连接了世界,另一方面却有令人沮丧的一面,因为人们患有精神疾病。如今,人们更容易在社交媒体平台上表达自己的想法和感受。此外,许多研究已经证明,通过分析社交媒体上的帖子,我们可以使用机器学习来识别有精神问题的人。Twitter就是这样一个平台,它覆盖了来自世界各地的广泛目标受众,从Twitter上我们可以通过分析其语言标记和情绪来检测抑郁症的早期阶段。使用情感分析数据集,我们在Naïve贝叶斯分类器的帮助下创建了一个模型,该模型将支持我们的主要模型,该模型将从推文中识别不同的情绪。我们还使用MBTI类型(迈尔·布里格斯类型指标)进行了临床测试,这是一种著名的性格测试,通过显示16种类型中的一种来识别一个人的特征。
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 from Tweets Along with Clinical Tests
Social media has become a massive surge in this generation for everyone to communicate with others, which on one half connects the world while on the other half has a depressing side with people suffering from mental illness. People nowadays express their thoughts and feelings more easily on social media platforms. In addition, numerous studies have proven that by analysing social media posts, we may identify people with mental problems using machine learning. Twitter is one such platform that covers a wide target audience from all parts of the world and from the tweets we can detect the early stage of depression by analyzing its linguistic markers and emotions. Using a sentimental analysis dataset we have created a model with the help of Naïve Bayes Classifier which will support our primary model that will recognize different emotions from the tweets. We've also performed clinical tests by using the MBTI Types (Myer Briggs Type Indicator), a well-known personality test that identifies a person's traits by indicating one of 16 types.
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