基于推特意见的新冠肺炎疫情在线学习情感分析

Arif Ridho Lubis, S. Prayudani, M. Lubis, Okvi Nugroho
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引用次数: 14

摘要

2019年冠状病毒病于2019年12月在武汉开始,并被世卫组织宣布为全球大流行。直到2021年1月,它影响了地球上所有的人类活动,即经历了许多障碍,从活动限制,旅游景点关闭到学校或大学面对面学习活动的限制。由于通过社交媒体的各种评论对社区产生广泛影响的政策,许多twitter用户发布了包含正面和负面评论的推文,从而发表了关于在线学习或冒险的言论。问题是它们包含了如此多不同的单词、缩写、非正式语言和符号,给选择哪些单词或单词组可以产生肯定或否定的陈述带来了困难。使用K-Nearest Neighbors算法对正、负推文数据进行分类,在0:0.754、1:0.635、2:0.721类下的分类结果为AUC,分类精度分数为0.86,召回率为0.85,因此在线学习推文数据上的正、负句分类结果ROC-AUC为0。853,精度值0.885。
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Sentiment Analysis on Online Learning During the Covid-19 Pandemic Based on Opinions on Twitter using KNN Method
Coronavirus Disease of 2019 began in Wuhan in December 2019 and it was declared as a global pandemic by WHO. Until January 2021, it affected all of human activities on earth i.e., experiencing many obstacles from restrictions on activities, closure of tourist attractions to restrictions on face-to-face learning activities in schools or universities. Due to the policy of providing a broad influence on the community with various comments through social media, many twitter users make tweets containing positive and negative comments leading to statements about online learning or daring. The problem is that they contain so many different words, abbreviations, informal language, and symbols, creating difficulties to choose which words or groups of words that can produce positive or negative statements. K-Nearest Neighbors algorithm is used to classify positive and negative tweet data, the results were AUC for class 0: 0.754, 1: 0.635, 2: 0.721 and with a precision classification score of 0.86, recall is 0.85 so that the results of the classification of negative and positive sentences on the online learning tweet data were ROC-AUC of 0. 853 and the accuracy value of 0.885.
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