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Predicting Vaccine Hesitancy and Vaccine Sentiment Using Topic Modeling and Evolutionary Optimization

机译:使用主题建模和进化优化预测疫苗犹豫和疫苗情绪

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The ongoing COVID-19 pandemic has posed serious threats to the world population, affecting over 219 countries with a staggering impact of over 162 million cases and 3.36 million casualties. With the availability of multiple vaccines across the globe, framing vaccination policies for effectively inoculating a country's population against such diseases is currently a crucial task for public health agencies. Social network users post their views and opinions on vaccines publicly and these posts can be put to good use in identifying vaccine hesitancy. In this paper, a vaccine hesitancy identification approach is proposed, built on novel text feature modeling based on evolutionary computation and topic modeling. The proposed approach was experimentally validated on two standard tweet datasets - the flu vaccine dataset and UK COVID-19 vaccine tweets. On the first dataset, the proposed approach outperformed the state-of-the-art in terms of standard metrics. The proposed model was also evaluated on the UKCOVID dataset and the results are presented in this paper, as our work is the first to benchmark a vaccine hesitancy model on this dataset.
机译:正在进行的Covid-19大流行为世界人口构成严重威胁,影响了219多个有超过16200万个案件的惊人的国家和33.6万人伤亡。随着全球多种疫苗的可用性,框架疫苗接种政策,以有效地接种一个国家对这些疾病的人口是目前对公共卫生机构的关键任务。社交网络用户公开发布他们对疫苗的看法和意见,这些帖子可以在鉴定疫苗犹豫不决时良好用途。本文提出了一种疫苗犹豫识别方法,基于进化计算和主题建模的新型文本特征建模构建。该方法在两种标准推文数据集上进行了实验验证 - 流感疫苗数据集和英国Covid-19疫苗推文。在第一个DataSet上,在标准度量方面,所提出的方法表现出最先进的。在UKCOVID数据集中还评估了所提出的模型,并在本文中介绍了结果,因为我们的工作是第一个在该数据集上基准犹豫不决模型的疫苗犹豫模型。

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