Nimmi K, Janet B, Selvan A Kalai, Sivakumaran N
Department of Computer Applications, National Institute of Technology, Tiruchirappalli, India.
Centre for Development of Advanced Computing (C-DAC), Thiruvananthapuram, India.
Appl Soft Comput. 2022 Jun;122:108842. doi: 10.1016/j.asoc.2022.108842. Epub 2022 Apr 18.
The COVID-19 precautions, lockdown, and quarantine implemented throughout the epidemic resulted in a worldwide economic disaster. People are facing unprecedented levels of intense threat, necessitating professional, systematic psychiatric intervention and assistance. New psychological services must be established as quickly as possible to support the mental healthcare needs of people in this pandemic condition. This study examines the contents of calls landed in the emergency response support system (ERSS) during the pandemic. Furthermore, a combined analysis of Twitter patterns connected to emergency services could be valuable in assisting people in this pandemic crisis and understanding and supporting people's emotions. The proposed Average Voting Ensemble Deep Learning model (AVEDL Model) is based on the Average Voting technique. The AVEDL Model is utilized to classify emotion based on COVID-19 associated emergency response support system calls (transcribed) along with tweets. Pre-trained transformer-based models BERT, DistilBERT, and RoBERTa are combined to build the AVEDL Model, which achieves the best results. The AVEDL Model is trained and tested for emotion detection using the COVID-19 labeled tweets and call content of the emergency response support system. This is the first deep learning ensemble model using COVID-19 emotion analysis to the best of our knowledge. The AVEDL Model outperforms standard deep learning and machine learning models by attaining an accuracy of 86.46 percent and Macro-average F1-score of 85.20 percent.
在整个疫情期间实施的新冠疫情预防措施、封锁和隔离导致了一场全球经济灾难。人们正面临前所未有的高度威胁,这需要专业、系统的精神科干预和援助。必须尽快建立新的心理服务,以满足处于这种大流行状况下人们的心理健康需求。本研究考察了疫情期间接入应急响应支持系统(ERSS)的电话内容。此外,对与应急服务相关的推特模式进行综合分析,对于在这场大流行危机中帮助人们以及理解和支持人们的情绪可能具有重要价值。所提出的平均投票集成深度学习模型(AVEDL模型)基于平均投票技术。AVEDL模型用于根据与新冠疫情相关的应急响应支持系统电话(转录)以及推文对情绪进行分类。预训练的基于Transformer的模型BERT、DistilBERT和RoBERTa被组合起来构建AVEDL模型,该模型取得了最佳效果。使用新冠疫情标记的推文和应急响应支持系统的电话内容对AVEDL模型进行情绪检测的训练和测试。据我们所知,这是首个使用新冠疫情情绪分析的深度学习集成模型。AVEDL模型的准确率达到86.46%,宏平均F1分数达到85.20%,优于标准的深度学习和机器学习模型。