The free flow of information has been accelerated by the rapid development of social media technology. There has been a significant social and psychological impact on the population due to the outbreak of Coronavirus disease (COVID-19). The COVID-19 pandemic is one of the current events being discussed on social media platforms. In order to safeguard societies from this pandemic, studying people's emotions on social media is crucial. As a result of their particular characteristics, sentiment analysis of texts like tweets remains challenging. Sentiment analysis is a powerful text analysis tool. It automatically detects and analyzes opinions and emotions from unstructured data. Texts from a wide range of sources are examined by a sentiment analysis tool, which extracts meaning from them, including emails, surveys, reviews, social media posts, and web articles. To evaluate sentiments, natural language processing (NLP) and machine learning techniques are used, which assign weights to entities, topics, themes, and categories in sentences or phrases. Machine learning tools learn how to detect sentiment without human intervention by examining examples of emotions in text. In a pandemic situation, analyzing social media texts to uncover sentimental trends can be very helpful in gaining a better understanding of society's needs and predicting future trends. We intend to study society's perception of the COVID-19 pandemic through social media using state-of-the-art BERT and Deep CNN models. The superiority of BERT models over other deep models in sentiment analysis is evident and can be concluded from the comparison of the various research studies mentioned in this article.
翻译:社交媒体技术的迅速发展加速了信息的自由流通。由于Corona病毒(COVID-19)的爆发,对民众产生了巨大的社会和心理影响。COVID-19大流行是社交媒体平台上讨论的当前事件之一。为了保护社会免受这一流行病的影响,在社交媒体上研究人们的情绪至关重要。由于社会媒体的特殊性,对诸如推文等文本的情绪分析仍然具有挑战性。感化分析是一个强有力的文本分析工具。它自动检测和分析来自非结构化数据的观点和情感。通过情绪分析工具对广泛的来源的文字进行了分析。从各种来源的文字中提取了它们的含义,包括电子邮件、调查、评论、社交媒体文章和网络文章。为了评估情绪、自然语言处理和机器学习技巧,在判决或语句中赋予实体、主题、类别等要素的权重。 机制学习模型通过研究文字中的情感实例,学会如何在人类不干预的情况下发现情绪。在大流行病的情况下,分析社会媒体的深度分析文本以揭示情感趋势,从它们中提取它们的含义,从这些内容,包括电子邮件、调查、评论、社会媒体文章和网络文章文章文章文章文章。我们打算通过更好的社会分析,从而更好地了解社会认识BRESRM-B-B-B-在社会学研究中预测社会上的未来趋势。通过对社会学研究,可以预测对社会的明显趋势,从而更好地了解社会认识社会学研究,从而更好地预测。通过对社会-B-B-B-</s>