SPGD_HIN:基于异构信息网络的垃圾邮件组检测

Alireza Bitarafan, Chitra Dadkhah
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引用次数: 2

摘要

近年来,网上商店和电子商务平台越来越受欢迎,比较可用产品的合理方法是使用其他在线用户对每种产品的评论或反馈。因此,这些平台可以成为垃圾邮件发送者通过虚假评论推广或贬低目标产品的绝佳机会。到目前为止,已经进行了大量的研究,目的是区分垃圾评论或垃圾邮件制造者与真正的垃圾邮件制造者,但不应忽视的是,垃圾邮件制造者经常相互勾结,以更自然地控制产品的评级分数。因此,本文主要关注后一个方面,即审查垃圾邮件发送者组检测。在以往的研究中,大多是先采用频繁项集挖掘(FIM)来寻找候选组,然后根据一些预定义的特征进行无监督排序。尽管FIM方法大多受到阈值设置的影响,即使用低支持值会导致效率低下,而使用高支持值会忽略一些有用的模式。此外,与无监督方法相比,半监督方法不需要大量的标记数据,可以大大提高检测的准确性。在本文中,我们利用异构信息网络(HIN)中的一些标记实例来解决上述挑战。使用HIN可以保持网络中不同类型节点之间的语义。此外,我们使用垃圾邮件发送者的行为及其关系来提取候选组,这使得当垃圾邮件发送者决定更聪明时,它是一种健壮的方法。在真实的Yelp数据集上的实验显示了我们方法的有效性。
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SPGD_HIN: Spammer Group Detection based on Heterogeneous Information Network
Online stores and e-commerce platforms have become increasingly popular in recent years, and a reasonable approach to compare the available products is to use comments or feedbacks written by other online users for each product. Therefore, these platforms can be a great opportunity for spammers to promote or demote their target products with fake reviews. So far, there is plenty of studies done with the purpose of distinguishing spam reviews or spammers from genuine ones, but it should not be neglected that often spammers work in collusion with each other to control the rating score of a product more naturally. Hence, this article focuses on the latter aspect i.e., review spammer group detection. In most of the previous works, Frequent Item set Mining (FIM) is applied in the early stage to find candidate groups and then an unsupervised ranking procedure is done based on some predefined features. Although, FIM methods mostly suffer from threshold setting, i.e., using low support values causes inefficiency and high support values ignore some useful patterns. Furthermore, instead of unsupervised methods, semi-supervised ones which don’t need many labeled data, can improve the accuracy of detection greatly. In this article, we tackle the above-mentioned challenges taking advantage of some labeled instances in a Heterogeneous Information Network (HIN). Using a HIN can preserve the semantics between different kinds of nodes in the network. Also, we extract candidate groups using spammer behaviors and their relations which makes it a robust approach when spammers decide to be more intelligent. Experiments on a real-life Yelp dataset show the efficiency of our approach.
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