A Comparative Analysis for Arabic Sentiment Analysis Models In E-Marketing Using Deep Learning Techniques

Sara Almutairi, F. Alotaibi
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Abstract

The Internet has a huge amount of information when it comes to analysis, much of which is valuable and significant. Arabic Sentiment Analysis (SA) is a method responsible for analyzing people’s thoughts, feelings, and responses to a variety of products and services on social networking and commercial sites. Several researchers utilize sentiment analysis to determine the opinions of customers in various areas, including e-marketing, business, and other fields. Deep learning (DL) is a useful technology for developing sentiment analysis models to improve e-marketing operations. There are a few studies targeting Arabic sentiment analysis (ASA) in e-marketing using deep learning algorithms. Due to a number of difficulties in the Arabic language, such as the language’s morphological features, the diversity of dialects, and the absence of suitable corpora, sentiment analysis on Arabic material is restricted. In this paper, we will compare several Arabic sentiment analysis models. Also, we discuss the deep learning algorithms that are employed in Arabic sentiment analysis. The domain of the collected papers is Arabic sentiment analysis in e-marketing using deep learning. Our first contribution is to introduce and present deep learning models that are used in ASA. Secondly, investigate and study Arabic datasets utilized for Arabic sentence analysis. We create and develop a new Arabic dataset for Saudi Arabian communication companies, namely Sara-Dataset, to increase the quality and quantity of their services. Third, each collected study is assessed in terms of its methodology, contributions, deep learning techniques, performance, Arabic datasets in emarketing, and potential improvements in developing Arabic sentiment analysis models. Fourth, we analyzed several papers’ performance in terms of accuracy, F-measure, recall, pre-procession, and area under the curve (AUC). Also, our comparative analysis includes feature selection (e.g., domain-specific selection) methods that are used in Arabic sentiment analysis. Fifth, we also discuss how to improve Arabic sentiment analysis using preprocessing techniques (e.g., word embedding). Finally, we provide a design model for analyzing Arabic sentiment about communications services provided by Saudi Arabian enterprises.
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基于深度学习技术的网络营销中阿拉伯情感分析模型的比较分析
当涉及到分析时,互联网上有大量的信息,其中许多是有价值的和重要的。阿拉伯情绪分析(SA)是一种负责分析人们对社交网络和商业网站上各种产品和服务的想法、感受和反应的方法。一些研究人员利用情感分析来确定客户在各个领域的意见,包括电子营销、商业和其他领域。深度学习(DL)是开发情感分析模型以改进电子营销运营的有用技术。有一些研究针对阿拉伯语情感分析(ASA)在电子营销中使用深度学习算法。由于阿拉伯文的形态学特征、方言的多样性以及缺乏合适的语料库等诸多困难,对阿拉伯文材料的情感分析受到了限制。在本文中,我们将比较几种阿拉伯语情感分析模型。此外,我们还讨论了用于阿拉伯语情感分析的深度学习算法。收集的论文领域是使用深度学习的电子营销中的阿拉伯语情感分析。我们的第一个贡献是介绍和展示用于ASA的深度学习模型。其次,调查和研究用于阿拉伯语句子分析的阿拉伯语数据集。我们为沙特阿拉伯通信公司创建和开发了一个新的阿拉伯语数据集,即Sara-Dataset,以提高他们服务的质量和数量。第三,每个收集到的研究都根据其方法、贡献、深度学习技术、性能、营销中的阿拉伯语数据集以及开发阿拉伯语情感分析模型的潜在改进进行评估。第四,我们分析了几篇论文在准确率、f值、召回率、预处理和曲线下面积(AUC)方面的表现。此外,我们的比较分析包括阿拉伯语情感分析中使用的特征选择(例如,特定领域选择)方法。第五,我们还讨论了如何使用预处理技术(例如,词嵌入)改进阿拉伯语情感分析。最后,我们提供了一个设计模型来分析阿拉伯人对沙特阿拉伯企业提供的通信服务的看法。
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