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基于情感分析和深度学习对新冠疫情相关推文进行跨文化极性与情感检测

Cross-Cultural Polarity and Emotion Detection Using Sentiment Analysis and Deep Learning on COVID-19 Related Tweets.

作者信息

Imran Ali Shariq, Daudpota Sher Muhammad, Kastrati Zenun, Batra Rakhi

机构信息

Department of Computer ScienceNorwegian University of Science and Technology (NTNU) 2815 Gjøvik Norway.

Department of Computer ScienceSukkur IBA University Sukkur 65200 Pakistan.

出版信息

IEEE Access. 2020 Sep 28;8:181074-181090. doi: 10.1109/ACCESS.2020.3027350. eCollection 2020.

DOI:10.1109/ACCESS.2020.3027350
PMID:34812358
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8545282/
Abstract

How different cultures react and respond given a crisis is predominant in a society's norms and political will to combat the situation. Often, the decisions made are necessitated by events, social pressure, or the need of the hour, which may not represent the nation's will. While some are pleased with it, others might show resentment. Coronavirus (COVID-19) brought a mix of similar emotions from the nations towards the decisions taken by their respective governments. Social media was bombarded with posts containing both positive and negative sentiments on the COVID-19, pandemic, lockdown, and hashtags past couple of months. Despite geographically close, many neighboring countries reacted differently to one another. For instance, Denmark and Sweden, which share many similarities, stood poles apart on the decision taken by their respective governments. Yet, their nation's support was mostly unanimous, unlike the South Asian neighboring countries where people showed a lot of anxiety and resentment. The purpose of this study is to analyze reaction of citizens from different cultures to the novel Coronavirus and people's sentiment about subsequent actions taken by different countries. Deep long short-term memory (LSTM) models used for estimating the sentiment polarity and emotions from extracted tweets have been trained to achieve state-of-the-art accuracy on the sentiment140 dataset. The use of emoticons showed a unique and novel way of validating the supervised deep learning models on tweets extracted from Twitter.

摘要

在应对危机时,不同文化如何做出反应和应对,这在很大程度上取决于一个社会应对这种情况的规范和政治意愿。通常,所做出的决定是由事件、社会压力或当下的需求所迫,而这些可能并不代表国家的意愿。有些人对此感到满意,而另一些人可能会表示不满。冠状病毒(COVID-19)在各国引发了对各自政府所做决定的类似复杂情绪。在过去几个月里,社交媒体上充斥着关于COVID-19、大流行、封锁以及相关话题标签的帖子,既有积极情绪也有消极情绪。尽管地理位置相近,但许多邻国的反应却各不相同。例如,丹麦和瑞典有许多相似之处,但在各自政府的决策上却大相径庭。然而,他们国内的支持大多是一致的,这与南亚邻国不同,在那里人们表现出了很多焦虑和不满。本研究的目的是分析不同文化背景的公民对新型冠状病毒的反应以及人们对不同国家随后采取行动的看法。用于从提取的推文估计情感极性和情绪的深度长短期记忆(LSTM)模型已经在sentiment140数据集上进行了训练,以达到最先进的准确率。表情符号的使用展示了一种独特而新颖的方法,用于在从Twitter提取的推文上验证监督深度学习模型。

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