当印度尼西亚人谈论COVID-19疫苗时,他们谈论什么:LDA的主题建模方法

Theresia Ratih Dewi Saputri, Caecilia Citra Lestari, S. Siahaan
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摘要

为了结束COVID-19大流行,政府试图通过各种项目和合作加速疫苗接种。不幸的是,与印度尼西亚的人口数量相比,这个数字仍然相对较小。造成这一挑战的原因有很多,其中之一是由于各种因素,市民不愿接受新冠病毒疫苗。了解这一因素,提高公众的依从性,可以加快疫苗接种计划。不幸的是,传统上获取与COVID-19疫苗排斥相关的知识可能具有挑战性。获取知识的方法之一是开展与COVID-19疫苗接受度相关的调查或访谈。这种方法在成本和资源方面效率不高。为了解决这些问题,我们提出了一种新的方法,通过实施一种名为Latent Dirichlet Allocation的主题建模算法来分析Twitter上与COVID-19印度尼西亚人的观点相关的主题。我们收集了22000多条与COVID-19疫苗相关的推文。通过将该算法应用于收集到的数据集,我们可以捕获人们在讨论COVID-19疫苗时的一般意见和话题。使用先前研究中收集的标记数据集验证了结果。一旦我们有了重要的术语,就可以由负责管理COVID-19疫苗的医疗专业人员确定基于该策略的策略。
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What do Indonesians talk when they talk about COVID-19 Vaccine: A Topic Modeling Approach with LDA
To end the COVID-19 pandemics, the government attempted to accelerate the vaccination through various programs and collaboration. Unfortunately, the number is still relatively small compared to the number of populations in Indonesia. There are some reasons attributed to this challenge, one of them being the reluctance of citizens to accept the COVID-19 vaccine due to various factors. Knowing this factor to increase public compliance, the vaccination program can be speed-up. Unfortunately, traditionally acquiring the knowledge related to COVID-19 vaccine rejection can be challenging.  One of the ways to capture the knowledge is by conducting a survey or interview related to COVID-19 vaccine acceptance. This method can be inefficient in terms of cost and resources. To address those problem, we propose a novel method for analyzing the topics related to the COVID-19 Indonesians’ opinions on Twitter by implementing topic modeling algorithm called Latent Dirichlet Allocation. We gathered more than 22000 tweets related to the COVID-19 vaccine. By applying the algorithm to the collected dataset, we can capture the what is general opinion and topic when people discuss about COVID-19 vaccine. The result was validated using the labeled dataset that have been gathered in the previous research. Once we have the important term, the strategy based on can be determined by the medical professional who are responsible to administer the COVID-19 vaccine. 
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