With the prevalence of the Internet, online reviews have become a valuable information resource for people. However, the authenticity of online reviews remains a concern, and deceptive reviews have become one of the most urgent network security problems to be solved. Review spams will mislead users into making suboptimal choices and inflict their trust in online reviews. Most existing research manually extracted features and labeled training samples, which are usually complicated and time-consuming. This paper focuses primarily on a neglected emerging domain - movie review, and develops a novel unsupervised spam detection model with an attention mechanism. By extracting the statistical features of reviews, it is revealed that users will express their sentiments on different aspects of movies in reviews. An attention mechanism is introduced in the review embedding, and the conditional generative adversarial network is exploited to learn users' review style for different genres of movies. The proposed model is evaluated on movie reviews crawled from Douban, a Chinese online community where people could express their feelings about movies. The experimental results demonstrate the superior performance of the proposed approach.
翻译:随着互联网的普及,在线审查已成为人们的宝贵信息资源。然而,在线审查的真实性仍然是一个令人关切的问题,欺骗性审查已成为最紧迫的网络安全问题之一需要解决。审查垃圾邮件将误导用户做出最不理想的选择,并使他们信任在线审查。大多数现有的手工提取的研究特征和标签培训样本通常复杂而费时。本文主要侧重于被忽视的新兴领域-电影审查,并开发了一个具有关注机制的新型不受监督的垃圾邮件检测模型。通过提取审查的统计特征,发现用户将表达他们对审查中电影不同方面的看法。在审查中引入了一种关注机制,并利用有条件的基因对抗网络来学习不同电影类型用户的审查风格。提议的模型是在从中国在线社区杜班(一个人们可以表达自己对电影的情感的中国在线社区)的电影审查中进行评估的。实验结果显示了拟议方法的优异性。