Sentiment Analysis for People's Opinions about COVID-19 Using LSTM and CNN Models

Maisa Al-Khazaleh, Marwah Alian, Mariam M. Biltawi, Bayan Al-Hazaimeh
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Abstract

The emergence of social media platforms, which contributed in activating the patterns of connection between individuals, leads to the availability of a huge amount of content such as text, images, and videos. Twitter is one of the most popular platforms of social media that encourage researchers to investigate people’s feelings and opinions among through sentiment analysis studies that elicited the interest of researchers in natural language processing field. Many techniques related to machine learning and deep learning models could be used to improve the efficiency and performance of sentiment analysis, especially in complex classification problems. In this paper, different models of long short-term memory recurrent neural network are used for the sentiment classification task. The input text was represented as vectors using Arabic pre-trained word embedding (Aravec). Experiments were conducted using different dimensions of Aravec on 15779 tweets about COVID-19 collected and labeled as positive and negative. The experimental results show an accuracy value of 98%.
基于LSTM和CNN模型的人们对COVID-19观点的情绪分析
社交媒体平台的出现激活了个人之间的联系模式,导致大量内容的可用性,如文本、图像、视频。Twitter是最受欢迎的社交媒体平台之一,它鼓励研究人员通过情感分析研究来调查人们之间的感受和观点,这引起了自然语言处理领域研究人员的兴趣。许多与机器学习和深度学习模型相关的技术可以用来提高情感分析的效率和性能,特别是在复杂的分类问题中。本文将长短期记忆递归神经网络的不同模型用于情感分类任务。使用阿拉伯语预训练词嵌入(Aravec)将输入文本表示为向量。利用不同维度的Aravec对15779条关于COVID-19的推文进行了实验,这些推文收集并标记为正面和负面。实验结果表明,该方法的准确率可达98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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