Analysis of citizen's sentiment towards Philippine administration's intervention against COVID-19

Matthew John Sino Cruz, M. D. De Leon
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Abstract

The COVID-19 pandemic affected the world. The World Health Organization or WHO issued guidelines the public must follow to prevent the spread of the disease. This includes social distancing, the wearing of facemasks, and regular washing of hands. These guidelines served as the basis for formulating policies by countries affected by the pandemic. In the Philippines, the government implemented different initiatives, following the guidelines of WHO, that aimed to mitigate the effect of the pandemic in the country. Some of the initiatives formulated by the administration include international and domestic travel restrictions, community quarantine, suspension of face-to-face classes and work arrangements, and phased reopening of the Philippine economy to name a few. The initiatives implemented by the government during the surge of COVID-19 disease have resulted in varying reactions from the citizens. The citizens expressed their reactions to these initiatives using different social media platforms such as Twitter and Facebook. The reactions expressed using these social media platforms were used to analyze the sentiment of the citizens towards the initiatives implemented by the government during the pandemic. In this study, a Bidirectional Recurrent Neural Network-Long Short-term memory - Support Vector Machine (BRNN-LSTM-SVM) hybrid sentiment classifier model was used to determine the sentiments of the Philippine public toward the initiatives of the Philippine government to mitigate the effects of the COVID-19 pandemic. The dataset used was collected and extracted from Facebook and Twitter using API and www.exportcomments.com from March 2020 to August 2020. 25% of the dataset was manually annotated by two human annotators. The manually annotated dataset was used to build the COVID-19 context-based sentiment lexicon, which was later used to determine the polarity of each document. Since the dataset contained unstructured and noisy data, preprocessing activities such as conversion to lowercase characters, removal of stopwords, removal of usernames and pure digit texts, and translation to the English language were performed. The preprocessed dataset was vectorized using Glove word embedding and was used to train and test the performance of the proposed model. The performance of the Hybrid BRNN-LSTM-SVM model was compared to BRNN-LSTM and SVM by performing experiments using the preprocessed dataset. The results show that the Hybrid BRNN-LSTM-SVM model, which gained 95% accuracy for the Facebook dataset and 93% accuracy for the Twitter dataset, outperformed the Support Vector Machine (SVM) sentiment model whose accuracy only ranges from 89% to 91% for both datasets. The results indicate that the citizens harbor negative sentiments towards the initiatives of the government in mitigating the effect of the COVID-19 pandemic. The results of the study may be used in reviewing the initiatives imposed during the pandemic to determine the issues which concern the citizens. This may help policymakers formulate guidelines that may address the problems encountered during a pandemic. Further studies may be conducted to analyze the sentiment of the public regarding the implementation of limited face-to-face classes for tertiary education, implementing lesser restrictions, vaccination programs in the country, and other related initiatives that the government continues to implement during the COVID-19 pandemic.
民众对菲律宾政府干预新冠肺炎疫情的看法分析
新冠肺炎疫情影响全球。世界卫生组织发布了公众必须遵守的指导方针,以防止这种疾病的传播。这包括保持社交距离、戴口罩和定期洗手。这些准则是受大流行病影响的国家制定政策的基础。在菲律宾,政府按照世卫组织的指导方针实施了不同的举措,旨在减轻该流行病对该国的影响。政府制定的一些举措包括国际和国内旅行限制,社区隔离,暂停面对面课程和工作安排,分阶段重新开放菲律宾经济等等。在COVID-19疾病激增期间,政府实施的举措引起了公民的不同反应。市民们通过Twitter和Facebook等不同的社交媒体平台表达了他们对这些举措的反应。在这些社交媒体平台上表达的反应被用来分析公民对政府在疫情期间实施的举措的看法。在本研究中,使用双向循环神经网络-长短期记忆-支持向量机(BRNN-LSTM-SVM)混合情绪分类器模型来确定菲律宾公众对菲律宾政府缓解COVID-19大流行影响的举措的情绪。使用的数据集是在2020年3月至2020年8月期间使用API和www.exportcomments.com从Facebook和Twitter收集和提取的。25%的数据集由两名人工注释者手动注释。人工注释的数据集用于构建基于COVID-19上下文的情感词典,该词典随后用于确定每个文档的极性。由于数据集包含非结构化和噪声数据,因此执行了预处理活动,例如转换为小写字符、删除停止词、删除用户名和纯数字文本以及翻译为英语。预处理后的数据集使用手套词嵌入进行矢量化,并用于训练和测试所提模型的性能。利用预处理后的数据集,将BRNN-LSTM-SVM混合模型的性能与BRNN-LSTM和SVM进行对比。结果表明,混合BRNN-LSTM-SVM模型在Facebook数据集上的准确率为95%,在Twitter数据集上的准确率为93%,优于支持向量机(SVM)情感模型,后者在两个数据集上的准确率仅在89%到91%之间。结果显示,国民对政府为缓解新冠疫情而采取的措施持否定态度。研究结果可用于审查大流行病期间实施的举措,以确定与公民有关的问题。这可能有助于决策者制定指导方针,解决大流行期间遇到的问题。可以开展进一步的研究,以分析公众对实施有限的高等教育面对面课程、实施较少的限制、在该国开展疫苗接种计划以及政府在COVID-19大流行期间继续实施的其他相关举措的看法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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