Sentiment analysis for news and social media in COVID-19

Xinran Yu, Chao Zhong, Dandan Li, Wei Xu
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引用次数: 12

Abstract

During the COVID-19 epidemic, the news is overwhelming in people's daily life. So, we aim to extract key information from a large amount of public news. This paper focus on the daily sentiment distribution of news and public opinion on Weibo that refers to the key word COVID-19. First, we refining the key news from all the news in a day to deal with long and large news data. Second, we transformer the headline into a high-dimensional vector. And then, divided them into k categories on the strength of k-means clustering algorithm. Finally, choose the closet news to the mean vector as the key news of the day. Moreover, we conduct sentiment analysis on all key news and Weibo data. By comparing the sentiment trend of news and Weibo, this study provides a new channel to analyze social public opinion.
COVID-19新闻和社交媒体的情绪分析
在新冠肺炎疫情期间,新闻充斥在人们的日常生活中。因此,我们的目标是从大量的公共新闻中提取关键信息。本文主要研究以COVID-19为关键词的微博新闻舆情的日常情绪分布。首先,我们从一天的所有新闻中提炼出重点新闻来处理长而大的新闻数据。其次,我们将标题转换为高维向量。然后,通过k-means聚类算法将它们划分为k类。最后,选择最隐秘的新闻到均值向量作为当天的关键新闻。此外,我们对所有关键新闻和微博数据进行情感分析。通过对新闻和微博的情绪趋势进行比较,本研究为分析社会民意提供了一个新的渠道。
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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