Textual emotional intelligence is playing a ubiquitously important role in leveraging human emotions on social media platforms. Social media platforms are privileged with emotional content and are leveraged for various purposes like opinion mining, emotion mining, and sentiment analysis. This data analysis is also levered for the prevention of online bullying, suicide prevention, and depression detection among social media users. In this article, we have designed an automatic depression detection of online social media users by analyzing their social media behavior. The designed depression detection classification can be effectively used to mine user's social media interactions and one can determine whether a social media user is suffering from depression or not. The underlying classifier is made using state-of-art technology in emotional artificial intelligence which includes LSTM (Long Short Term Memory) and other machine learning classifiers. The highest accuracy of the classifier is around 70% of LSTM and for SVM the highest accuracy is 81.79%. We trained the classifier on the datasets that are widely used in literature for emotion mining tasks. A confusion matrix of results is also given.
翻译:在社交媒体平台上,社交媒体平台具有情感内容的特权,并被用于各种目的,如见解挖掘、情感挖掘和情绪分析等。这些数据分析也被用于防止社交媒体用户的在线欺凌、自杀预防和抑郁症检测。在本篇文章中,我们通过分析社交媒体行为,设计了在线社交媒体用户的自动抑郁症检测。设计中的抑郁症检测分类可以有效地用于地雷用户的社会媒体互动,人们可以确定社交媒体用户是否患有抑郁症。基础分类器是在情感人工智能中使用最新技术,包括LSTM(长时记忆)和其他机器学习分类器。分类器的最高精度约为LSTM的70%,而SVM的最高精度为81.79%。我们培训了用于情感采矿任务的文献中广泛使用的数据集分类器。还给出了一个结果混乱矩阵。