使用机器学习方法分析社交媒体帖子的情绪稳定性

U. M, P. A, V. V, Swarnalatha M.
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引用次数: 1

摘要

抑郁或情绪是当今卫生组织最关心的问题。我们认为影响社交媒体帖子的能力是理解抑郁症和人群个性类型的一种新型镜子。社会网络分析是对一群人和他们之间存在的关系的研究。它在我们的生活中变得如此重要,如果我想了解一个陌生人的任何事情,我可以在社交媒体网站的帮助下找到。各种社交媒体网站的出现帮助每个人都可以轻松地表达和分享他们对任何事情的看法和感受,并与世界各地的数百万人分享。社交媒体是一个有价值的资源,可以根据一个人在社交媒体上的帖子、评论或活动来识别他们的个性特征。在提出的方法中,我们开发了一个网络扩展的应用程序来连接社交媒体网络,以提取个人发布的帖子。提取后已被用于识别一个人的情绪稳定性。NLP和机器学习算法用于将个人情绪稳定性分为稳定、抑郁或倾向抑郁。根据我们的研究,重要的特征选择和他们的组合考虑。从而提高了分类的性能和准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Emotional Stability on Social Media Post using Machine Learning Approach
Depression or emotion is the most important concern of health organizations today. We consider the capability of influencing social media postings as a new type of mirror in understanding depression and also the type of personality in populations. Social network analysis is the study of a group of people and the relationships that exist between them. It has become so important in our lives that if I want to know anything about a stranger, I can find out with the help of social media websites. The arrival of various social media networking sites has helped everyone to easily express and share their opinions and feelings about anything with millions of people around the world. Social media is a valuable resource for identifying an individual's personality traits based on their posts, comments, or activities on social media. The proposed methodology, we have developed the application of a web extension to connect with social media networks to extract the post by the individual person. Extracted post has been used to identify the emotional stability of a person. NLP and Machine Learning algorithms are used to classify individual emotional stability as stable, depressed, or tending towards depression. According to our study, significant feature selections and their combinations were considered. Hence it improves the performance and accuracy of classification.
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