Text Clustering of COVID-19 Vaccine Tweets

David Okore Ukwen, M. Karabatak
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Abstract

The advent of the novel coronavirus disease (COVID-19) in late December 2019 led to the dramatic loss of human life worldwide and presented an unprecedented challenge to public health, education, social life, world economics, and the world of work. Equal access to safe and effective vaccines is very vital to ending the coronavirus pandemic. This research paper aims to perform text clustering on COVID-19 vaccine tweets. It investigates the optimal number of clusters prevalent in the COVID-19 vaccine corpus using deep learning techniques and machine learning algorithms. The study also investigates how using word embeddings can improve the accuracy of the proposed models by evaluating unsupervised learning methods. Machine learning clustering algorithms such as k-means and HDBSCAN, deep learning-based clustering techniques, and UMAP a dimensionality reduction algorithm were employed to perform text clustering. The results of this research showed the optimal clusters obtained by using deep learning clustering techniques and machine-learning algorithms for text clustering. HDBSCAN clustering algorithm showed better clustering results based on features learned while k-means performed better clustering based on various evaluation metrics.
COVID-19疫苗推文的文本聚类
2019年12月下旬,新型冠状病毒病(COVID-19)的出现导致全世界大量人员丧生,并对公共卫生、教育、社会生活、世界经济和劳动世界提出了前所未有的挑战。平等获得安全有效的疫苗对于结束冠状病毒大流行至关重要。本研究论文旨在对COVID-19疫苗推文进行文本聚类。它使用深度学习技术和机器学习算法研究了COVID-19疫苗语料库中流行的最佳簇数。该研究还通过评估无监督学习方法,探讨了如何使用词嵌入来提高所提出模型的准确性。采用k-means和HDBSCAN等机器学习聚类算法、基于深度学习的聚类技术和UMAP降维算法进行文本聚类。研究结果表明,采用深度学习聚类技术和机器学习算法对文本进行聚类得到了最优聚类。HDBSCAN聚类算法基于学习到的特征表现出更好的聚类效果,k-means基于各种评价指标表现出更好的聚类效果。
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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