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State-of-art approaches for review spammer detection: a survey

机译:最新的垃圾邮件发送者检测方法:一项调查

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摘要

E-commerce websites are now favourite for shopping comfortably at home without any burden of going to market. Their success depends upon the reviews written by the consumers who used particular products and subsequently shared their experiences with that product. The reviews also affects the buying decision of customer. Because of this reason the activity of fake reviews posting is increasing. The brand competitors of the product or the company itself may involve in posting fraud reviews to gain more profit. Such fraudulent reviews are spam review that badly affects the decision choice of the prospective consumer of the products. Many customers are misguided due to fake reviews. The person, who writes the fake reviews, is called the spammer. Identification of spammers is indirectly helpful in identifying whether the reviews are spam or not. The detection of review spammers is serious concern for the E-commerce business. To help researchers in this vibrant area, we present the state of art approaches for review spammer detection. This paper presents a comprehensive survey of the existing spammer detection approaches describing the features used for individual and group spammer detection, dataset summary with details of reviews, products and reviewers. The main aim of this paper is to provide a basic, comprehensive and comparative study of current research on detecting review spammer using machine learning techniques and give future directions. This paper also provides a concise summary of published research to help potential researchers in this area to innovate new techniques.
机译:现在,电子商务网站是喜欢在家中舒适购物而无须投放市场负担的最爱。他们的成功取决于使用特定产品并随后与该产品分享经验的消费者的评论。评论也会影响客户的购买决定。因此,虚假评论发布的活动正在增加。产品的品牌竞争对手或公司本身可能会参与发布欺诈性评论,以获取更多利润。此类欺诈性评论是垃圾邮件评论,会严重影响产品潜在消费者的决策选择。由于虚假评论,许多客户被误导了。撰写虚假评论的人称为垃圾邮件发送者。识别垃圾邮件发送者可间接帮助识别评论是否为垃圾邮件。检测垃圾邮件发送者是电子商务业务的严重关注。为了帮助这个充满活力的地区的研究人员,我们介绍了审查垃圾邮件发送者检测的最新方法。本文对现有的垃圾邮件发送者检测方法进行了全面调查,描述了用于个人和团体垃圾邮件发送者检测的功能,带有评论,产品和评论者详细信息的数据集摘要。本文的主要目的是提供有关使用机器学习技术检测垃圾邮件发送者的最新研究的基础,全面和比较性研究,并给出未来的方向。本文还提供了已发表研究的简要摘要,以帮助该领域的潜在研究人员创新技术。

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