论文标题

使用情感分析和深度学习的跨文化极性和情感检测 - 关于COVID-19的案例研究

Cross-Cultural Polarity and Emotion Detection Using Sentiment Analysis and Deep Learning -- a Case Study on COVID-19

论文作者

Imran, Ali Shariq, Doudpota, Sher Mohammad, Kastrati, Zenun, Bhatra, Rakhi

论文摘要

在危机中,不同的文化如何反应和回应在社会的规范和政治意愿中占主导地位。通常,做出的决定是由事件,社会压力或小时需要做出的,这可能不能代表国家的意志。尽管有些人对此感到满意,但其他人可能会表现出怨恨。冠状病毒(Covid-19)带来了各个国家的类似情绪的混合,朝着各自政府所做的决定。社交媒体被过去几个月的Covid-19,大流行,锁定,主题标签上的帖子轰炸。尽管地理位置接近,但许多邻国对彼此的反应有所不同。例如,有许多相似之处的丹麦和瑞典在各自政府做出的决定上脱颖而出。然而,他们国家的支持大多是一致的,与南亚邻国不同,人们表现出极大的焦虑和怨恨。这项研究倾向于检测和分析在大流行的初始阶段所证明的情绪和情绪,以及在Twitter帖子上采用自然语言处理(NLP)和深度学习技术的锁定期。用于估计情感极性和提取推文的情绪的深层短期记忆(LSTM)模型已经过训练,以实现Mentiment140数据集的最新精度。情绪子的使用显示了一种独特而新颖的方式,可以验证从Twitter提取的推文上验证的深度学习模型。

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 will of the nation. 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, 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. This study tends to detect and analyze sentiment polarity and emotions demonstrated during the initial phase of the pandemic and the lockdown period employing natural language processing (NLP) and deep learning techniques on Twitter posts. 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.

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