RLOSD:基于表示学习的意见垃圾检测

Z. Sedighi, H. Ebrahimpour-Komleh, A. Bagheri
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引用次数: 9

摘要

如今,随着在线评论的大量增加,垃圾评论对决策的有害影响对客户和组织都造成了不可挽回的后果。现有的方法研究了垃圾邮件和非垃圾邮件评论之间的区别。大多数算法都集中在特征工程方法上,以暴露数据表示的适应性。本文提出了一种基于决策树的方法来从可信评论中发现欺骗性评论。我们使用无监督表示学习和传统的特征选择方法来提取合适的特征,并用决策树对它们进行评估。我们的模型考虑了数据的相关性来选择合适的特征。结果表明,该方法在检测垃圾意见方面具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RLOSD: Representation learning based opinion spam detection
Nowadays, by vastly increasing in online reviews, harmful influence of spam reviews on decision making causes irrecoverable outcomes for both customers and organizations. Existing methods investigate for a way to contradistinction between spam and non-spam reviews. Most algorithms focus on feature engineering approaches to expose an accommodation of data representation. In this paper we propose a decision tree-based method to reveal deceptive reviews from trustworthy ones. We use unsupervised representation learning along with traditional feature selection methods to extract appropriate features and evaluate them with a decision tree. Our model takes data correlation into consideration to opt suitable features. The result shows the better performance in detecting opinion spam, comparing most common methods in this area.
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