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A Statistical Language Modeling Approach to Online Deception Detection

机译:在线欺骗检测的统计语言建模方法

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摘要

Online deception is disrupting our daily life, organizational process, and even national security. Existing approaches to online deception detection follow a traditional paradigm by using a set of cues as antecedents for deception detection, which may be hindered by ineffective cue identification. Motivated by the strength of statistical language models (SLMs) in capturing the dependency of words in text without explicit feature extraction, we developed SLMs to detect online deception. We also addressed the data sparsity problem in building SLMs in general and in deception detection in specific using smoothing and vocabulary pruning techniques. The developed SLMs were evaluated empirically with diverse datasets. The results showed that the proposed SLM approach to deception detection outperformed a state-of-the-art text categorization method as well as traditional feature-based methods.
机译:在线欺骗正在破坏我们的日常生活,组织过程,甚至国家安全。现有的在线欺骗检测方法遵循传统的范式,即使用一组线索作为欺骗检测的先决条件,这可能会由于无效的线索识别而受到阻碍。出于统计语言模型(SLM)的优势,它可以捕获文本中单词的相关性而无需显式提取特征,因此,我们开发了SLM来检测在线欺骗。我们还解决了一般情况下在构建SLM以及使用平滑和词汇修剪技术进行欺骗检测方面的数据稀疏性问题。已开发的SLM使用各种数据集进行了经验评估。结果表明,所提出的SLM欺骗检测方法优于最新的文本分类方法以及传统的基于特征的方法。

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