2019-n-CoV推特哈希标签数据的聚类分类

Koffka Khan, E. Ramsahai
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引用次数: 1

摘要

随着Twitter和Facebook等社交通信平台最近的增长,聚类等无监督机器学习技术正在广泛使用。聚类可以在这些非结构化数据集中找到模式。我们从Kaggle数据集中收集了与新冠肺炎相关的标签匹配的推文。我们使用该数据集比较了九种聚类算法的性能。我们使用监督学习模型评估了这些算法的可推广性。最后,使用选定的无监督学习算法对聚类进行分类。排名前五的是安全、犯罪、产品、国家和健康。事实证明,这对使用大量推特数据的机构很有帮助,这些机构需要在进行进一步分类之前快速找到数据中的关键点。
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Categorizing 2019-n-CoV Twitter Hashtag Data by Clustering
Unsupervised machine learning techniques such as clustering are widely gaining use with the recent increase in social communication platforms like Twitter and Facebook. Clustering enables the finding of patterns in these unstructured datasets. We collected tweets matching hashtags linked to COVID-19 from a Kaggle dataset. We compared the performance of nine clustering algorithms using this dataset. We evaluated the generalizability of these algorithms using a supervised learning model. Finally, using a selected unsupervised learning algorithm we categorized the clusters. The top five categories are Safety, Crime, Products, Countries and Health. This can prove helpful for bodies using large amount of Twitter data needing to quickly find key points in the data before going into further classification.
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