Sentence Classification Using Attention Model for E-Commerce Product Review

Nagendra N, Chandra J
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Abstract

: The importance of aspect extraction in text classification, particularly in the e-commerce sector. E-commerce platforms generate vast amounts of textual data, such as comments, product descriptions, and customer reviews, which contain valuable information about various aspects of products or services. Aspect extraction involves identifying and classifying individual traits or aspects mentioned in textual reviews to understand customer opinions, improve products, and enhance the customer experience. The role of product reviews in e-commerce is discussed, emphasizing their value in aiding customers' purchase decisions and guiding businesses in product stocking and marketing strategies. Reviews are essential for boosting sales potential, maintaining a good reputation, and promoting brand recognition. Customers extensively research product reviews from different sources before purchasing, making them vital user-generated content for e-commerce businesses. The current work provided an efficient and novel classification model for sentence classification using the ABNAM model. The automated text classification models available cannot categorize the data into sixteen distinct classes. The technologies applied for the mentioned work contain TF-IDF, N-gram, CNN, linear SVM, random forest, Naïve bays, and ABNAM with significant results. The best-performing ML method for the successful classification of a given sentence into one of the sixteen categories is achieved with the proposed model named the based Neural Attention Model (ABNAM), which has the highest accuracy at 97%. The research acclaimed ABNAM as a novel classification model with the highest-class categorizations.
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利用注意力模型为电子商务产品评论进行句子分类
:方面提取在文本分类中的重要性,尤其是在电子商务领域。电子商务平台会产生大量的文本数据,如评论、产品描述和客户评价,其中包含有关产品或服务各个方面的宝贵信息。特征提取包括对文本评论中提及的个别特征或方面进行识别和分类,以了解客户意见、改进产品并提升客户体验。本文讨论了产品评论在电子商务中的作用,强调了其在帮助客户做出购买决策以及指导企业制定产品库存和营销策略方面的价值。评论对于提高销售潜力、维护良好声誉和促进品牌认知度至关重要。顾客在购买前会广泛研究不同来源的产品评论,因此评论对于电子商务企业来说是至关重要的用户生成内容。目前的工作提供了一种使用 ABNAM 模型进行句子分类的高效而新颖的分类模型。现有的自动文本分类模型无法将数据分为十六个不同的类别。上述工作应用的技术包括 TF-IDF、N-gram、CNN、线性 SVM、随机森林、Naïve bays 和 ABNAM,并取得了显著效果。基于神经注意模型(ABNAM)是将给定句子成功分类为 16 个类别之一的最佳 ML 方法,其准确率最高,达到 97%。该研究称赞 ABNAM 是一种新颖的分类模型,具有最高的类别分类能力。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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