With the spread and development of new epidemics, it is of great reference value to identify the changing trends of epidemics in public emotions. We designed and implemented the COVID-19 public opinion monitoring system based on time series thermal new word mining. A new word structure discovery scheme based on the timing explosion of network topics and a Chinese sentiment analysis method for the COVID-19 public opinion environment is proposed. Establish a "Scrapy-Redis-Bloomfilter" distributed crawler framework to collect data. The system can judge the positive and negative emotions of the reviewer based on the comments, and can also reflect the depth of the seven emotions such as Hopeful, Happy, and Depressed. Finally, we improved the sentiment discriminant model of this system and compared the sentiment discriminant error of COVID-19 related comments with the Jiagu deep learning model. The results show that our model has better generalization ability and smaller discriminant error. We designed a large data visualization screen, which can clearly show the trend of public emotions, the proportion of various emotion categories, keywords, hot topics, etc., and fully and intuitively reflect the development of public opinion.
翻译:随着新流行病的蔓延和发展,查明公共情绪流行病趋势的变化具有极大的参考价值。我们设计并实施了基于时间序列热新字采矿的COVID-19公共舆论监测系统。根据网络主题的时速爆炸和中国对COVID-19公共舆论环境的情绪分析方法,提出了一个新的字结构发现计划;建立了一个“快速-雷迪斯-布鲁姆过滤器”分布式爬行器框架来收集数据。该系统可以根据评论来判断审查员的正面和负面情绪,还可以反映七种情绪的深度,如希望、快乐和沮丧。最后,我们改进了该系统的情绪分歧模式,并将COVID-19相关评论的情绪差异错误与贾古深层学习模式相比较。结果显示,我们的模型具有更好的概括能力和较小的相左偏差错误。我们设计了一个大型数据视觉屏幕,可以清楚地显示公众情感的趋势、各种情绪类别、关键词、热题等的比例,并充分、直截地反映公众舆论的发展。