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A Multi-View Learning Approach to Deception Detection

机译:欺骗检测的多视图学习方法

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Recently, automatic deception detection has gained momentum thanks to advances in computer vision, computational linguistics and machine learning research fields. The majority of the work in this area focused on written deception and analysis of verbal features. However, according to psychology, people display various nonverbal behavioral cues, in addition to verbal ones, while lying. Therefore, it is important to utilize additional modalities such as video and audio to detect deception accurately. When multi-modal data was used for deception detection, previous studies concatenated all verbal and nonverbal features into a single vector. This concatenation might not be meaningful, because different feature groups can have different statistical properties, leading to lower classification accuracy. Following this intuition, we apply, for the first time in deception detection, a multi-view learning (MVL) approach, where each view corresponds to a feature group. This results in improved classification results over the state of the art methods. Additionally, we show that the optimized parameters of the MVL algorithm can give insights into the contribution of each feature group to the final results, thus revealing the importance of each feature and eliminating the need of performing feature selection as well. Finally, we focus on analyzing face-based low level, not hand crafted features, which are extracted using various pre-trained Deep Neural Networks (DNNs), showing that face is the most important nonverbal cue for the detection of deception.
机译:最近,通过计算机视觉,计算语言学和机器学习研究领域的进步,自动欺骗性检测获得了势头。这面积的大多数工作都集中在书面欺骗和口头特征分析。然而,根据心理学,人们展示各种非语言行为线索,除了口头,撒谎。因此,重要的是利用诸如视频和音频等附加模态来准确地检测欺骗。当多模态数据用于欺骗检测时,之前的研究将所有口头和非语言特征连接到单个向量中。这种连接可能不有意义,因为不同的特征组可以具有不同的统计属性,导致分类精度较低。在这种直觉之后,我们应用了第一次欺骗检测,多视图学习(MVL)方法,其中每个视图对应于特征组。这导致改进的分类导致现有方法的状态。此外,我们表明MVL算法的优化参数可以对每个特征组的贡献提供对最终结果的贡献,从而揭示每个特征的重要性并消除了执行特征选择的需要。最后,我们专注于分析基于面部的低级,而不是手工制作的特征,这些功能是使用各种预先训练的深层神经网络(DNN)提取的,表明面部是检测欺骗的最重要的非语言提示。

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