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Spam review detection using self-organizing maps and convolutional neural networks

机译:垃圾邮件审查检测使用自组织地图和卷积神经网络

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摘要

Online public reviews have significant influenced customers who purchase products or seek services. Fake reviews are posted online to promote or demote targeted products or reputation of the organizations and businesses. Spam review detection has been the focus of many researchers in recent years. As the online services have been growing rapidly, the importance of the issue is ever increasing and needs to be addressed properly. In this regard, there is a variety of approaches that have been introduced to distinguish truthful reviews from the fake ones. The main features engineered in the past studies typically involve two types of linguistic-based and behavioral-based characteristics of the reviews. Unsupervised, supervised and semi-supervised machine learning methods have been widely utilized to perform such a classification. This paper introduces a novel approach to detect fake reviews from the genuine ones using linguistic features. Unsupervised learning via self-organizing maps (SOM) in conjunction with a convolutional neural networks (CNN) are employed to perform classification of the reviews. We transform the reviews into images by arranging semantically-similar words around a pixel of the image or equivalently a SOM grid cell. The resulting review images are consequently fed to the CNN for supervised training and then classification. Comprehensive tests on two gold-standard datasets show the effectiveness of the proposed method on single and multi-domain contexts with accuracy of 88% and 87%, respectively.
机译:在线公开评论有重大影响商品或寻求服务的客户。假审查在线发布,以促进或贬低目标产品或组织和企业的声誉。垃圾邮件审查检测是近年来许多研究人员的重点。随着在线服务在迅速增长的情况下,问题的重要性越来越多,需要正确解决。在这方面,已经引入了各种方法,以区分假冒者的真实评论。过去研究的主要特点通常涉及两种类型的基于语言和基于行为的评论特征。未经监督,监督和半监督机器学习方法已被广泛利用来执行此类分类。本文介绍了一种使用语言特征从真正的真实特征检测假审查的新方法。通过自组织地图(SOM)与卷积神经网络(CNN)结合使用的无监督学习,用于执行评论的分类。我们通过在图像的像素周围或等效的SOM网格单元围绕图像围绕着语义类似的单词来转换评论到图像。因此,所得到的审查图像被馈送到CNN以进行监督培训,然后进行分类。两个金标准数据集的全面测试显示了所提出的方法在单一和多域上下文上的有效性,分别为88%和87%。

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