基于标注扩展和神经网络的意见垃圾检测

Yuanchao Liu, B. Pang
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引用次数: 1

摘要

在线评论在潜在客户的购买决策中扮演着越来越重要的角色。顺便说一句,在获得利润或宣传的欲望的驱使下,垃圾邮件发送者可能被雇佣来撰写虚假评论,以提高或降低产品或服务的声誉。相应地,近年来,垃圾意见检测也引起了企业界和研究界的广泛关注。然而,与新闻分类或博客分类等其他任务不同,由于人工注释的昂贵性,现有的评论垃圾邮件数据集通常受到限制,这可能会进一步影响检测性能,即使已经开发出优秀的分类器。本文提出了一种新的方法,通过充分利用现有的标记小尺寸数据集来提高意见垃圾邮件检测的性能。我们首先设计了一个注释扩展方案,该方案使用额外的树分类器来训练多个估计器,然后从未标记的样本迭代生成可靠的标记样本。随后,我们在一个新扩展的数据集上研究神经网络场景,以学习分布式表示。实验结果表明,该方法具有更好的泛化能力和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion Spam Detection based on Annotation Extension and Neural Networks
Online reviews play an increasingly important role in the purchase decisions of potential customers. Incidentally, driven by the desire to gain profit or publicity, spammers may be hired to write fake reviews and promote or demote the reputation of products or services. Correspondingly, opinion spam detection has attracted attention from both business and research communities in recent years. However, unlike other tasks such as news classification or blog classification, the existing review spam datasets are typically limited due to the expensiveness of human annotation, which may further affect detection performance even if excellent classifiers have been developed. We propose a novel approach in this paper to boost opinion spam detection performance by fully utilizing the existing labelled small-size dataset. We first design an annotation extension scheme that uses extra tree classifiers to train multiple estimators and then iteratively generate reliable labelled samples from unlabeled ones. Subsequently, we examine neural network scenarios on a newly extended dataset to learn the distributed representation. Experimental results suggest that the proposed approach has better generalization capability and improved performance than state-of-the-art methods.
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