Survey on Spam Filtering Using Netspam Framework

Khushabu Solanke, M. Kulkarni
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Abstract

Majority of people uses internet and trust’s the contents over it. The scenario where anyone can bring out a survey gives an open edge to the spammer to generate fake surveys about products and services. Identification of these intruder and fake contain is a widely debated issue of research as of now tremendous amount of studies has been done till now, then also the existing work lacks behind in differentiating spam reviews and none of them gives the significant result to the collected feature type. This application uses a new structure, called NetSpam, which offers spam features to demonstrate product review data sets as heterogeneous information networks in order to design a spam review detection method in such networks. Using the importance of spam features helps us to achieve better results on review data sets with respect to different metrics. The outcomes represent that NetSpam results with the previous methods and encompassed by four categories of features: The first type of features performs better than the other categories, involving review - behavioral, user - behavioral, linguistic review and user - linguistic.
基于Netspam框架的垃圾邮件过滤研究
大多数人使用互联网,并信任互联网上的内容。任何人都可以进行调查的情况给垃圾邮件发送者提供了制造虚假产品和服务调查的机会。这些入侵者和虚假内容的识别是一个广泛争论的研究问题,目前已经做了大量的研究,但是现有的工作在区分垃圾评论方面还很欠缺,而且没有一个对收集到的特征类型给出显著的结果。本应用程序使用一种称为NetSpam的新结构,它提供了垃圾邮件功能,以演示产品评论数据集作为异构信息网络,以便在这种网络中设计垃圾邮件审查检测方法。利用垃圾邮件特性的重要性可以帮助我们根据不同的指标在审查数据集上获得更好的结果。结果表明,NetSpam使用之前的方法得到的结果包含四类特征:第一类特征比其他类别表现更好,包括评论-行为、用户-行为、语言评论和用户-语言。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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