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COVID-19 Outbreak Forecasting Based on Vaccine Rates and Tweets Classification

机译:基于疫苗接种率和推文分类的 COVID-19 爆发预测

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摘要

The spread of COVID-19 has affected more than 200 countries and has caused serious public health concerns. The infected cases are on the increase despite the effectiveness of the vaccines. An efficient and quick surveillance system for COVID-19 can help healthcare decision-makers to contain the virus spread. In this study, we developed a novel framework using machine learning (ML) models capable of detecting COVID-19 accurately at an early stage. To estimate the risks, many models use social networking sites (SNSs) in tracking the disease outbreak. Twitter is one of the SNSs that is widely used to create an efficient resource for disease real-time analysis and can provide an early warning for health officials. We introduced a pipeline framework of outbreak prediction that incorporates a first-step hybrid method of word embedding for tweet classification. In the second step, we considered the classified tweets with external features such as vaccine rate associated with infected cases passed to machine learning algorithms for daily predictions. Thus, we applied different machine learning models such as the SVM, RF, and LR for classification and the LSTM, Prophet, and SVR for prediction. For the hybrid word embedding techniques, we applied TF-IDF, FastText, and Glove and a combination of the three features to enhance the classification. Furthermore, to improve the forecast performance, we incorporated vaccine data as input together with tweets and confirmed cases. The models’ performance is more than 80 accurate, which shows the reliability of the proposed study.
机译:COVID-19 的传播影响了 200 多个国家,并引起了严重的公共卫生问题。尽管疫苗有效,但感染病例仍在增加。高效快速的COVID-19监测系统可以帮助医疗保健决策者遏制病毒传播。在这项研究中,我们开发了一种新的框架,使用机器学习 (ML) 模型,能够在早期阶段准确检测 COVID-19。为了估计风险,许多模型使用社交网站(SNS)来跟踪疾病爆发。Twitter是SNS之一,被广泛用于创建有效的疾病实时分析资源,并可以为卫生官员提供早期预警。我们引入了一个爆发预测的管道框架,该框架结合了用于推文分类的词嵌入的第一步混合方法。在第二步中,我们考虑了具有外部特征的分类推文,例如与感染病例相关的疫苗接种率,这些推文传递给机器学习算法进行日常预测。因此,我们应用了不同的机器学习模型,例如 SVM、RF 和 LR 进行分类,并使用 LSTM、Prophet 和 SVR 进行预测。对于混合词嵌入技术,我们应用了 TF-IDF、FastText 和 Glove 以及这三个特征的组合来增强分类。此外,为了提高预测性能,我们将疫苗数据与推文和确诊病例一起纳入输入。模型的性能准确率超过80%,显示了所提研究的可靠性。

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