论文标题

来自Twitter数据的COVID-19疫苗接种反应的基于深度学习的情感分析

Deep Learning-Based Sentiment Analysis of COVID-19 Vaccination Responses from Twitter Data

论文作者

Alam, Kazi Nabiul, Khan, Md Shakib, Dhruba, Abdur Rab, Khan, Mohammad Monirujjaman, Al-Amri, Jehad F., Masud, Mehedi, Rawashdeh, Majdi

论文摘要

这种共同的19日大流行是如此可怕,以至于导致严重的焦虑,恐惧症和复杂的感觉或情感。即使发起了针对冠状病毒的疫苗接种,人们的感觉也变得更加多样化和复杂,我们的目标是使用一些深度学习技术在这项研究中理解和揭示他们的情感。当前,社交媒体是表达情感和情感的最佳方法,借助它,尤其是Twitter,人们可以更好地了解人们的趋势以及人们的思想发生了什么。我们进行这项研究的动机是了解人们对疫苗接种过程的观点,以及他们对此的多样化的想法。在这项研究中,收集的推文的时间表是从12月21日至7月21日,其中包含有关最近全世界最常见的疫苗的推文。人们对各种疫苗的观点是通过使用自然语言处理(NLP)工具(Valence Away Away dictions for Mentiments推理者(Vader))评估的。通过将情感极性初始化为3组(正,负和中性),在这里可视化了总体情况,我们的发现呈现为33.96%的正,17.55%负和48.49%中性反应。复发性神经网络(RNN)以长期记忆(LSTM和BI-LSTM)为导向的结构用于评估预测模型的性能,LSTM的精度达到90.59%,而Bi-LSTM的准确度达到90.83%。还显示了其他性能指标,例如精度,召回,F-1得分和混乱矩阵,可以更有效地验证我们的模型和发现。这项研究将帮助每个人都了解有关Covid-19-19疫苗的公众舆论,并影响从我们美丽的世界中消除冠状病毒的目的。

This COVID-19 pandemic is so dreadful that it leads to severe anxiety, phobias, and complicated feelings or emotions. Even after vaccination against Coronavirus has been initiated, people feelings have become more diverse and complex, and our goal is to understand and unravel their sentiments in this research using some Deep Learning techniques. Social media is currently the best way to express feelings and emotions, and with the help of it, specifically Twitter, one can have a better idea of what is trending and what is going on in people minds. Our motivation for this research is to understand the sentiment of people regarding the vaccination process, and their diverse thoughts regarding this. In this research, the timeline of the collected tweets was from December 21 to July 21, and contained tweets about the most common vaccines available recently from all across the world. The sentiments of people regarding vaccines of all sorts were assessed by using a Natural Language Processing (NLP) tool named Valence Aware Dictionary for sEntiment Reasoner (VADER). By initializing the sentiment polarities into 3 groups (positive, negative and neutral), the overall scenario was visualized here and our findings came out as 33.96% positive, 17.55% negative and 48.49% neutral responses. Recurrent Neural Network (RNN) oriented architecture such as Long Short-Term Memory (LSTM and Bi-LSTM) is used to assess the performance of the predictive models, with LSTM achieving an accuracy of 90.59% and Bi-LSTM achieving an accuracy of 90.83%. Other performance metrics such as Precision, Recall, F-1 score, and Confusion matrix were also shown to validate our models and findings more effectively. This study will help everyone understand public opinion on the COVID-19 vaccines and impact the aim of eradicating the Coronavirus from our beautiful world.

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