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Multi-view Ensemble Learning Using Rough Set Based Feature Ranking for Opinion Spam Detection

机译:基于粗糙集的特征排名的多视图集合学习垃圾邮件检测

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Product reviews and blogs play a vital role in giving an insight to end user for making purchasing decision. Studies show a direct link between product reviews/rating and revenue of product. So, review hosting sites are often targeted to promote or demote products by writing fake reviews. These fictitious opinions which are written to sound authentic known as deceptive opinion spam. To build an automatic classifier for opinion spam detection, feature engineering plays an important role. Deceptive cues are needed to be transformed into features. We have extracted various psychological, linguistic, and other textual features from text reviews. We have used mMulti-view Ensemble Learning (MEL) to build the classifier. Rough Set Based Optimal Feature Set Partitioning (RS-OFSP) algorithm is proposed to construct views for MEL. Proposed algorithm shows promising results when compared to random feature set partitioning (Bryll Pattern Recognit 36(6):1291-1302, 2003) [1] and optimal feature set partitioning (Kumar and Minz Knowl Inf Syst, 2016) [2].
机译:产品评论和博客在发表洞察最终用户进行购买决策方面发挥着至关重要的作用。研究显示产品评论/评级与产品收入之间的直接联系。因此,审查托管站点通常是针对通过编写虚假评论而促进或降低产品的目标。这些虚构的意见,这些意见是被称为欺骗意见垃圾邮件的声音。要为Ipace SPAM检测构建自动分类器,功能工程发挥着重要作用。需要将欺骗性提示转化为特征。我们提取了文字评论的各种心理,语言和其他文本特征。我们使用了Mmulti-View集合学习(MEL)来构建分类器。基于粗糙集的最优特征设置分区(RS-OFSP)算法被提出为构造MEL的视图。建议的算法显示与随机特征设定分区相比的有希望的结果(Bryll Pattern识别36(6):1291-1302,2003)[1]和最佳特征设定分区(Kumar和Minz Inf Syst,2016)[2]。

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