Gupta Sonam, Goel Lipika, Singh Arjun, Prasad Ajay, Ullah Mohammad Aman
Department of Computer Science and Engineering, Ajay Kumar Garg Engineering College, Ghaziabad, India.
Gokaraju Rangaraju Institute of Engineering and Technology, Hyderabad, India.
Comput Intell Neurosci. 2022 Apr 6;2022:4395358. doi: 10.1155/2022/4395358. eCollection 2022.
Rapid technological advancements are altering people's communication styles. With the growth of the Internet, social networks (Twitter, Facebook, Telegram, and Instagram) have become popular forums for people to share their thoughts, psychological behavior, and emotions. Psychological analysis analyzes text and extracts facts, features, and important information from the opinions of users. Researchers working on psychological analysis rely on social networks for the detection of depression-related behavior and activity. Social networks provide innumerable data on mindsets of a person's onset of depression, such as low sociology and activities such as undergoing medical treatment, a primary emphasis on oneself, and a high rate of activity during the day and night. In this paper, we used five machine learning classifiers-decision trees, K-nearest neighbor, support vector machines, logistic regression, and LSTM-for depression detection in tweets. The dataset is collected in two forms-balanced and imbalanced-where the oversampling of techniques is studied technically. The results show that the LSTM classification model outperforms the other baseline models in the depression detection healthcare approach for both balanced and imbalanced data.
快速的技术进步正在改变人们的交流方式。随着互联网的发展,社交网络(推特、脸书、电报和照片墙)已成为人们分享想法、心理行为和情感的热门平台。心理分析通过分析文本,从用户观点中提取事实、特征和重要信息。从事心理分析的研究人员依靠社交网络来检测与抑郁症相关的行为和活动。社交网络提供了大量关于一个人抑郁症发作心态的数据,比如社交活跃度低以及诸如接受治疗、过度自我关注和昼夜活动频繁等行为。在本文中,我们使用了五种机器学习分类器——决策树、K近邻、支持向量机、逻辑回归和长短期记忆网络——来检测推特中的抑郁症。数据集以两种形式收集——平衡和不平衡——并对过采样技术进行了技术研究。结果表明,在平衡和不平衡数据的抑郁症检测医疗方法中,长短期记忆网络分类模型优于其他基线模型。