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Semi-Supervised Learning Based Fake Review Detection

机译:基于半监督学习的虚假评论检测

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摘要

The impact of product reviews on the business platform is growing, giving consumers more information about their products and directly influencing consumers' buying decisions. However, the existence of fake reviews makes the consumer cannot make the right judgments of sellers, which can also causes the credibility of the platform downgraded. Thus, it is of practical significance to identify the fake reviews in the platform. The way of manually annotating the data set is difficult, meanwhile it is nearly impossible to make the correct annotation by reading only a small portion of comments based on the classifier trained under the traditional method. In previous studies, it has been shown that false comments have characteristics such as high similarity in content and high concentration of comments. In this paper, we propose a new algorithm to identify fake reviews based on semi-supervised learning method. Real data based experiments have demonstrated that the proposed method can achieve desired performance.
机译:产品评论对业务平台的影响越来越大,为消费者提供有关其产品的更多信息,并直接影响消费者的购买决定。但是,虚假评论的存在使消费者无法对卖方做出正确的判断,这也可能导致平台信誉下降。因此,识别平台中的虚假评论具有现实意义。手动注释数据集的方法很困难,同时几乎不可能通过基于传统方法训练的分类器仅读取一小部分注释来进行正确的注释。在先前的研究中,已经表明虚假评论具有诸如内容的高度相似性和高度集中的评论等特征。本文提出了一种基于半监督学习方法的虚假评论识别算法。基于实际数据的实验表明,所提出的方法可以实现所需的性能。

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