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Computational Intelligence Based Recurrent Neural Network for Identification Deceptive Review in the E-Commerce Domain

机译:基于计算智能的递归神经网络在电子商务领域的识别欺骗性审查

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摘要

Most consumers depend on online reviews posted on e-commerce websites when determining whether or not to buy a service or a product. Moreover, due to the presence of fraudulent (deceptive) reviews, the fundamental problem in such reviews is not fully addressed. Thus, deceptive reviews present wrong and misguiding opinions that are harmful to consumers and e-commerce. People called fraudsters who intentionally write deceptive reviews to target and deceive potential consumers, as they target businesses that have a well-built reputation or fame for their personal promotion, create such reviews. Therefore, developing a deceptive review detection system is essential for identifying and classifying online product reviews as truthful or fake/deceptive reviews. The main objective of this research work is to analyze and identify online deceptive reviews in electronic product reviews in the Amazon and Yelp domains. For this purpose, two experiments were conducted individually. The first was executed on standard Yelp product reviews. The second was performed on Amazon product review datasets. For this dataset, we created and labeled it using a deceptiveness score calculated based on features extracted from the review text using the linguistic inquiry and word count (LIWC) tool. These features were authenticity, negative words, comparing words negation words, analytical thinking, and positive words as well as the given rating value by a user. The recurrent neural network, bidirectional long short-term memory (RNN-BLSTM) model, was used to both datasets in order to conduct the evaluation. The application of this model was contingent upon the learning of words embedding of the review text. Finally, we evaluated the RNN-BLSTM model’s performance using the Yelp and Amazon datasets and compared the results. The results were 89.6 regarding testing accuracy for both datasets. From our experimental results, we observed that the LIWC feature with word embedding in the review text provided better accuracy performance compared with other existing methods.
机译:大多数消费者在决定是否购买服务或产品时,会依赖电子商务网站上发布的在线评论。此外,由于存在欺诈性(欺骗性)评论,此类评论中的根本问题并未得到充分解决。因此,欺骗性评论提出了对消费者和电子商务有害的错误和误导性意见。人们称欺诈者为故意撰写欺骗性评论以瞄准和欺骗潜在消费者,因为他们针对的是因个人推广而拥有良好声誉或名气的企业,他们会创建此类评论。因此,开发欺骗性评论检测系统对于识别和分类在线产品评论是真实或虚假/欺骗性评论至关重要。这项研究工作的主要目的是分析和识别亚马逊和 Yelp 域中电子产品评论中的在线欺骗性评论。为此,分别进行了两个实验。第一个是在标准的 Yelp 产品评论中执行的。第二个是在亚马逊产品评论数据集上执行的。对于这个数据集,我们使用欺骗性分数创建并标记它,该分数是根据使用语言查询和字数统计 (LIWC) 工具从评论文本中提取的特征计算得出的。这些特征是真实性、否定词、比较词否定词、分析思维和积极词以及用户给出的评分值。为了进行评估,将循环神经网络,双向长短期记忆(RNN-BLSTM)模型用于两个数据集。该模型的应用取决于对评论文本嵌入的单词的学习。最后,我们使用 Yelp 和 Amazon 数据集评估了 RNN-BLSTM 模型的性能,并比较了结果。两个数据集的测试准确率为89.6%。从我们的实验结果中,我们观察到,与其他现有方法相比,在评论文本中嵌入单词的LIWC特征提供了更好的准确性性能。

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