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自动检测并理解对新冠疫苗接种的认知:一项中东案例研究。

Automatically detecting and understanding the perception of COVID-19 vaccination: a middle east case study.

作者信息

Aljedaani Wajdi, Abuhaimed Ibrahem, Rustam Furqan, Mkaouer Mohamed Wiem, Ouni Ali, Jenhani Ilyes

机构信息

University of North Texas, Denton, USA.

Prince Sultan University, Riyadh, Saudi Arabia.

出版信息

Soc Netw Anal Min. 2022;12(1):128. doi: 10.1007/s13278-022-00946-0. Epub 2022 Sep 4.

Abstract

INTRODUCTION

The development of COVID-19 vaccines has been a great relief in many countries that have been affected by the pandemic. As a result, many governments have made significant efforts to purchase and administer vaccines to their populations. However, accommodating such vaccines is typically confronted with people's reluctance and fear. Like any other important event, COVID-19 vaccines have attracted people's discussions on social media and impacted their opinions about vaccination.

OBJECTIVE

The goal of this study is twofold: First, it conducts a sentiment analysis around COVID-19 vaccines by automatically analyzing Arabic users' tweets. This analysis has been spread over time to better capture the changes in vaccine perceptions. This will provide us with some insights into the most popular and accepted vaccine(s) in the Arab countries, as well as the reasons behind people's reluctance to take the vaccine. Second, it develops models to detect any vaccine-related tweets, to help with gathering all information related to people's perception of the virus, and potentially detecting vaccine-related tweets that are not necessarily tagged with the virus's main hashtags.

METHODS

Arabic Tweets were collected by the authors, starting from January 1st, 2021, until April 20th, 2021. We deployed various Natural Language Processing (NLP) to distill our selected tweets. The curated dataset included in the analysis consisted of 1,098,376 unique tweets. To achieve the first goal, we designed state-of-the-art sentiment analysis techniques to extract knowledge related to the degree of acceptance of all existing vaccines and what are the main obstacles preventing the wide audience from accepting them. To achieve the second goal, we tackle the detection of vaccine-related tweets as a binary classification problem, where various Machine Learning (ML) models were designed to identify such tweets regardless of whether they use the vaccine hashtags or not.

RESULTS

Generally, we found that the highest positive sentiments were registered for Pfizer-BioNTech, followed by Sinopharm-BIBP and Oxford-AstraZeneca. In addition, we found that 38% of the overall tweets showed negative sentiment, and only 12% had a positive sentiment. It is important to note that the majority of the sentiments vary between neutral and negative, showing the lack of conviction of the importance of vaccination among the large majority of tweeters. This paper extracts the top concerns raised by the tweets and advocates for taking them into account when advertising for the vaccination. Regarding the identification of vaccine-related tweets, the Logistic Regression model scored the highest accuracy of 0.82. Our findings are concluded with implications for public health authorities and the scholarly community to take into account to improve the vaccine's acceptance.

摘要

引言

新冠疫苗的研发给许多受疫情影响的国家带来了极大的宽慰。因此,许多政府都大力采购疫苗并为民众接种。然而,推广此类疫苗通常会遭遇民众的抵触和恐惧。与其他任何重大事件一样,新冠疫苗引发了人们在社交媒体上的讨论,并影响了他们对疫苗接种的看法。

目的

本研究的目标有两个:第一,通过自动分析阿拉伯用户的推文,围绕新冠疫苗进行情感分析。随着时间推移展开这项分析,以更好地把握疫苗认知的变化。这将为我们提供一些见解,了解阿拉伯国家最受欢迎和被接受的疫苗,以及人们不愿接种疫苗的原因。第二,开发模型来检测任何与疫苗相关的推文,以帮助收集所有与人们对该病毒认知相关的信息,并有可能检测出不一定带有该病毒主要主题标签的与疫苗相关的推文。

方法

作者收集了从2021年1月1日至2021年4月20日的阿拉伯语推文。我们运用了各种自然语言处理(NLP)技术来提炼我们所选的推文。分析中纳入的精选数据集包含1,098,376条独特推文。为实现第一个目标,我们设计了最先进的情感分析技术,以提取与所有现有疫苗的接受程度相关的知识,以及阻止广大受众接受疫苗的主要障碍是什么。为实现第二个目标,我们将检测与疫苗相关的推文作为一个二元分类问题来处理,设计了各种机器学习(ML)模型来识别此类推文,无论它们是否使用疫苗主题标签。

结果

总体而言,我们发现对辉瑞 - 生物科技公司疫苗的积极情绪最高,其次是国药集团北京生物制品研究所疫苗和牛津 - 阿斯利康疫苗。此外,我们发现总体推文中38%表现出负面情绪,只有12%表现出积极情绪。需要注意的是,大多数情绪在中性和负面之间波动,这表明绝大多数推特用户对疫苗接种重要性缺乏信心。本文提取了推文中提出的主要担忧,并主张在宣传疫苗接种时予以考虑。关于识别与疫苗相关的推文,逻辑回归模型的准确率最高,为0.82。我们的研究结果对公共卫生当局和学术界具有启示意义,可供他们参考以提高疫苗的接受度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5db9/9441136/0c6092e56562/13278_2022_946_Fig1_HTML.jpg

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