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Sentiment Analysis on COVID-19 Twitter Data Streams Using Deep Belief Neural Networks

机译:使用深度信念神经网络对 COVID-19 Twitter 数据流进行情感分析

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摘要

Social media is Internet-based by design, allowing people to share content quickly via electronic means. People can openly express their thoughts on social media sites such as Twitter, which can then be shared with other people. During the recent COVID-19 outbreak, public opinion analytics provided useful information for determining the best public health response. At the same time, the dissemination of misinformation, aided by social media and other digital platforms, has proven to be a greater threat to global public health than the virus itself, as the COVID-19 pandemic has shown. The public’s feelings on social distancing can be discovered by analysing articulated messages from Twitter. The automated method of recognizing and classifying subjective information in text data is known as sentiment analysis. In this research work, we have proposed to use a combination of preprocessing approaches such as tokenization, filtering, stemming, and building N-gram models. Deep belief neural network (DBN) with pseudo labelling is used to classify the tweets. Top layers of the base classifiers are boosted in the pseudo labelling strategy, whereas lower levels of the base classifiers share weights for feature extraction. By introducing the pseudo boost mechanism, our suggested technique preserves the same time complexity as a DBN while achieving fast convergence to optimality. The pseudo labelling improves the performance of the classification. It extracts the keywords from the tweets with high precision. The results reveal that using the DBN classifier in conjunction with the bigram in the N-gram model outperformed other models by 90.3 percent. The proposed approach can also aid medical professionals and decision-makers in determining the best course of action for each location based on their views regarding the pandemic.
机译:社交媒体的设计是基于互联网的,允许人们通过电子方式快速分享内容。人们可以在Twitter等社交媒体网站上公开表达自己的想法,然后可以与其他人分享。在最近的 COVID-19 爆发期间,舆论分析为确定最佳公共卫生应对措施提供了有用的信息。与此同时,正如 COVID-19 大流行所表明的那样,在社交媒体和其他数字平台的帮助下,错误信息的传播已被证明对全球公共卫生的威胁比病毒本身更大。公众对社交距离的感受可以通过分析来自Twitter的清晰信息来发现。识别和分类文本数据中主观信息的自动化方法称为情感分析。在这项研究工作中,我们建议结合使用预处理方法,例如标记化、过滤、词干提取和构建 N-gram 模型。具有伪标签的深度信念神经网络 (DBN) 用于对推文进行分类。在伪标记策略中,基础分类器的顶层得到提升,而基础分类器的较低级别共享用于特征提取的权重。通过引入伪升压机制,我们提出的技术保留了与DBN相同的时间复杂度,同时实现了快速收敛到最优。伪标签提高了分类的性能。它从推文中高精度地提取关键字。结果显示,在 N-gram 模型中将 DBN 分类器与二元组组合使用时,性能优于其他模型 90.3%。拟议的方法还可以帮助医疗专业人员和决策者根据他们对大流行的看法确定每个地点的最佳行动方案。

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