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推特情绪分析:基于 COVID-19 的阿拉伯文文本挖掘方法。

Twitter sentiment analysis: An Arabic text mining approach based on COVID-19.

机构信息

Department of Information Technology, College of Computer, Qassim University, Buraydah, Saudi Arabia.

出版信息

Front Public Health. 2022 Oct 10;10:966779. doi: 10.3389/fpubh.2022.966779. eCollection 2022.

Abstract

The 21st century has seen a lot of innovations, among which included the advancement of social media platforms. These platforms brought about interactions between people and changed how news is transmitted, with people now able to voice their opinion as opposed to before where only the reporters were speaking. Social media has become the most influential source of speech freedom and emotions on their platforms. Anyone can express emotions using social media platforms like Facebook, Twitter, Instagram, and YouTube. The raw data is increasing daily for every culture and field of life, so there is a need to process this raw data to get meaningful information. If any nation or country wants to know their people's needs, there should be mined data showing the actual meaning of the people's emotions. The COVID-19 pandemic came with many problems going beyond the virus itself, as there was mass hysteria and the spread of wrong information on social media. This problem put the whole world into turmoil and research was done to find a way to mitigate the spread of incorrect news. In this research study, we have proposed a model of detecting genuine news related to the COVID-19 pandemic in Arabic Text using sentiment-based data from Twitter for Gulf countries. The proposed sentiment analysis model uses Machine Learning and SMOTE for imbalanced dataset handling. The result showed the people in Gulf countries had a negative sentiment during COVID-19 pandemic. This work was done so government authorities can easily learn directly from people all across the world about the spread of COVID-19 and take appropriate actions in efforts to control it.

摘要

21 世纪见证了许多创新,其中包括社交媒体平台的进步。这些平台促进了人与人之间的互动,改变了新闻传播的方式,人们现在可以表达自己的观点,而不是以前只有记者在说话。社交媒体已经成为言论自由和平台上情感表达最具影响力的来源。任何人都可以使用 Facebook、Twitter、Instagram 和 YouTube 等社交媒体平台表达情感。每种文化和生活领域的原始数据都在逐日增加,因此需要处理这些原始数据以获取有意义的信息。如果任何国家或地区想要了解其人民的需求,就应该挖掘出能够显示人民情感实际含义的数据。COVID-19 大流行带来了许多超出病毒本身的问题,因为社交媒体上出现了大规模的恐慌和错误信息的传播。这个问题使整个世界陷入混乱,人们进行了研究以寻找减轻错误新闻传播的方法。在这项研究中,我们提出了一种使用来自海湾国家 Twitter 的基于情感的数据集检测阿拉伯文 COVID-19 大流行相关真实新闻的模型。所提出的情感分析模型使用机器学习和 SMOTE 处理不平衡数据集。结果表明,在 COVID-19 大流行期间,海湾国家的人民情绪消极。这项工作是为了让政府当局能够直接从世界各地的人们那里了解 COVID-19 的传播情况,并采取适当行动加以控制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/96a8/9589219/ea6f9174bab5/fpubh-10-966779-g0001.jpg

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