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首页> 外文期刊>International Journal of High Performance Computing and Networking >Detecting fake reviews via dynamic multimode network
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Detecting fake reviews via dynamic multimode network

机译:通过动态多模网络检测假审查

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摘要

Online product reviews can greatly affect the consumer's shopping decision. Thus, a larger number of unscrupulous merchants post fake or unfair reviews to mislead consumers for their profit and fame. The common approaches to find these spam reviews are analysing the text similarity or rating pattern. With these common approaches we can easily identify ordinary spammers, but we cannot find the unusual ones who manipulate their behaviour to act just like genuine reviewers. In this paper, we propose a novel method to recognise these unusual ones by using relations among reviewers, reviews, commodities and stores. Firstly, we present four fundamental concepts, which are the quality of the merchandise, the honesty of the review, the trustworthiness of the reviewer and the reliability of the store, thus enabling us to identify the spam reviewers more efficiently. Secondly, we propose our multimode network model for identifying suspicious reviews and then give three corresponding algorithms. Eventually, we find that the multi-view spam detection based on the multimode network can detect more subtle false reviews according to our experiments.
机译:在线产品评论可以极大地影响消费者的购物决定。因此,更大数量的令人肆无忌惮的商家,假冒或不公平的审查,以误导消费者的利润和名望。查找这些垃圾邮件评论的常见方法正在分析文本相似或评级模式。通过这些常见的方法,我们可以轻松识别普通垃圾邮件发送者,但我们找不到操作他们行为的不寻常的垃圾邮件,就像真正的评论者一样。在本文中,我们提出了一种通过使用审稿人员,评论,商品和商店之间的关系来识别这些不寻常的方法。首先,我们提出了四个基本概念,这是商品质量,审查的诚实,审查者的可信度以及商店的可靠性,从而使我们能够更有效地识别垃圾邮件审查员。其次,我们提出了我们的多模网络模型来识别可疑审查,然后给出三种相应的算法。最终,我们发现基于多模网络的多视图垃圾邮件检测可以根据我们的实验检测更微妙的错误评论。

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