基于情感分析的Covid-19 Twitter评论深度LSTM-RNN分类方法

IF 0.9 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING Scalable Computing-Practice and Experience Pub Date : 2023-09-10 DOI:10.12694/scpe.v24i3.2138
Jatla Srikanth, Avula Damodaram Shanmugam
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引用次数: 0

摘要

在当今世界,先进的互联网技术大大增加了人们对社交网络的亲和力,以了解最新的时事,并与居住在不同城市的其他人交流。社会舆论分析有助于确定COVID-19大流行期间的最佳公共卫生应对措施。分析Twitter上的清晰推文可以揭示公众对社会距离的看法。情感分析用于对文本数据进行分类,分析人们的情绪。提出的工作使用LSTM-RNN和SMOTE方法对Twitter数据进行分类。所建议的方法使用由注意层加权的增加特征和基于lstm - rnn的网络作为基础。该方法通过注意机制计算改进的信息转换框架相对于现有BI-LSTM和LSTM模型的优势。分析了四个可公开访问的类标签的组合,如快乐、悲伤、中性和愤怒。使用TextBlob、VADER (Valence - Aware Dictionary for Sentiment Reasoning)和SentiWordNet对推文信息进行极化和主观性分析。使用TF-IDF (Term Frequency- inverse Document Frequency)和BoW两种特征提取方法成功地构建了该模型并对其进行了评估。与之前的方法相比,建议的深度学习模型在性能指标上有了很大的提高,包括准确性、精度和召回率。这证明了推荐的深度学习策略的有效性和实用性,以及将其用于COVID-19评论的情感分类是多么简单。该方法对文本的分类准确率达到97%,而在现有的Bi-LSTM中,对文本的分类准确率最高达到88%。
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A Deep LSTM-RNN Classification Method for Covid-19 Twitter Review Based on Sentiment Analysis
In today’s world, advanced internet technologies have significantly increased people’s affinity towards social networks to stay updated on current events and communicate with others residing in different cities. Social opinion analyses helped determine the optimal public health response during the COVID-19 pandemic. Analysis of articulating tweets from Twitter can reveal the public’s perceptions of social distance. Sentiment Analysis is used for classifying text data and analyzing people’s emotions. The proposed work uses LSTM-RNN with the SMOTE method for categorizing Twitter data. The suggested approach uses increased characteristics weighted by attention layers and an LSTM-RNN-based network as its foundation. This method computes the advantage of an improved information transformation framework through the attention mechanism compared to existing BI-LSTM and LSTM models. A combination of four publicly accessible class labels such as happy, sad, neutral, and angry, is analyzed. The message of tweets is analyzed for polarization and subjectivity using TextBlob, VADER (Valence Aware Dictionary for Sentiment Reasoning), and SentiWordNet. The model has been successfully built and evaluated using two feature extraction methods, TF-IDF (Term Frequency-Inverse Document Frequency) and Bag of Words (BoW). Compared to the previous methodologies, the suggested deep learning model improved considerably in performance measures, including accuracy, precision, and recall. This demonstrates how effective and practical the recommended deep learning strategy is and how simple it is to employ for sentiment categorization of COVID-19 reviews. The proposed method achieves 97% accuracy in classifying the text whereas, among existing Bi-LSTM, achieves 88% maximum in the text classification.
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Scalable Computing-Practice and Experience
Scalable Computing-Practice and Experience COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.00
自引率
0.00%
发文量
10
期刊介绍: The area of scalable computing has matured and reached a point where new issues and trends require a professional forum. SCPE will provide this avenue by publishing original refereed papers that address the present as well as the future of parallel and distributed computing. The journal will focus on algorithm development, implementation and execution on real-world parallel architectures, and application of parallel and distributed computing to the solution of real-life problems.
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