Emotion Detection in Text: Advances in Sentiment Analysis Using Deep Learning

Dr. Walaa Saber Ismail
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Abstract

In the modern era of digital communication, the analysis of sentiment has emerged as a crucial tool for understanding and inferring public sentiment as communicated through written text. This is particularly relevant in the context of social media platforms such as Twitter, Facebook and Instagram. The present study focuses on the urgent matter of public opinion regarding the practice of animal testing, employing advanced deep-learning methodologies for sentiment analysis. A dataset of 15,360 tweets about animal testing was collected using the Twitter API. The data was prepared for analysis by undergoing careful preprocessing and word embedding it through the utilization of Word2vec. To classify tweets into positive and negative sentiment categories, a Long Short-Term Memory (LSTM) model was employed, given its suitability for processing sequential data. Remarkably, an accuracy rate of 88.7 percent was achieved by the model. It was determined that around 80% of tweets expressed criticism towards animal testing, indicating the presence of a substantial negative sentiment majority. These results show the topic's continuing significance by emphasizing its highly emotional and controversial nature. It is concluded that deep learning, and in particular LSTM models, can be used to effectively analyze large amounts of social media data and yield insightful understandings of public opinion. This study underlines the significance of sentiment analysis for gaining insight into public opinion and for its applications in policymaking and discourse analysis.
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文本中的情感检测:使用深度学习进行情感分析的进展
在现代数字通信时代,情感分析已成为了解和推断通过书面文本传播的公众情绪的重要工具。这与 Twitter、Facebook 和 Instagram 等社交媒体平台尤其相关。本研究采用先进的深度学习方法进行情感分析,重点关注有关动物实验实践的紧急舆情问题。我们使用 Twitter API 收集了 15,360 条有关动物实验的推文数据集。数据经过仔细的预处理,并通过 Word2vec 进行了词嵌入,为分析做好了准备。为了将推文分为正面和负面情感类别,我们采用了长短期记忆(LSTM)模型,因为该模型适合处理连续数据。值得注意的是,该模型的准确率达到了 88.7%。经测定,约有 80% 的推文表达了对动物实验的批评,这表明存在着大量的负面情绪。这些结果显示了该话题的持续重要性,强调了其高度情绪化和争议性。结论是,深度学习,尤其是 LSTM 模型,可用于有效分析大量社交媒体数据,并对公众舆论产生深刻的理解。本研究强调了情感分析对于洞察民意的重要性,以及在决策和话语分析中的应用。
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期刊介绍: JoWUA is an online peer-reviewed journal and aims to provide an international forum for researchers, professionals, and industrial practitioners on all topics related to wireless mobile networks, ubiquitous computing, and their dependable applications. JoWUA consists of high-quality technical manuscripts on advances in the state-of-the-art of wireless mobile networks, ubiquitous computing, and their dependable applications; both theoretical approaches and practical approaches are encouraged to submit. All published articles in JoWUA are freely accessible in this website because it is an open access journal. JoWUA has four issues (March, June, September, December) per year with special issues covering specific research areas by guest editors.
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