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Deceptive Opinion Spam Detection Using Neural Network

机译:神经网络的欺骗性垃圾邮件检测

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Deceptive opinion spam detection has attracted significant attention from both business and research communities. Existing approaches are based on manual discrete features, which can capture linguistic and psychological cues. However, such fcatures fail to encode the semantic meaning of a document from the discourse perspective, which limits the performance. In this paper, we empirically explore a neural network model to learn document-level representation for detecting deceptive opinion spam. In particular, given a document, the model learns sentence representations with a convolutional neural network, which are combined using a gated recurrent neural network with attention mechanism to model discourse information and yield a documen-t vector. Finally, the document representation is used directly as features to identify deceptive opinion spam. Experimental results on three domains (Hotel, Restaurant, and Doctor) show that our proposed method outperforms state-of-the-art methods.
机译:具有欺骗性意见的垃圾邮件检测已引起企业界和研究界的极大关注。现有方法基于手动离散功能,可以捕获语言和心理暗示。但是,从话语角度来看,这样的功能无法对文档的语义进行编码,从而限制了性能。在本文中,我们经验性地探索了一种神经网络模型,以学习用于检测欺骗性意见垃圾邮件的文档级表示形式。特别是,在给定文档的情况下,该模型使用卷积神经网络学习句子表示,使用具有注意机制的门控递归神经网络对其进行组合,以对话语信息进行建模并生成文档矢量。最后,文档表示形式直接用作识别欺骗性垃圾邮件的特征。在三个领域(酒店,餐厅和医生)的实验结果表明,我们提出的方法优于最新方法。

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