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Applying Ensemble Learning Techniques and Neural Networks to Deceptive and Truthful Information Detection Task in the Flow of Speech

机译:集成学习技术和神经网络在语音流中欺骗性和真实性信息检测任务中的应用

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This paper presents the results of experiments on applying ensemble learning techniques and neural networks to a paralinguistic analysis of deceptive and truthful statements in the flow of speech. Based on an analysis and comparison of different approaches to the issue, we propose using a mixture of such methods. The Real-Life Trial Deception Detection Dataset was used for both training and testing. All the experiments were performed using 10-fold cross-validation. Using two-layer neural networks, k-nearest neighbor, random forest for evaluating and principal component analysis methods for preprocessing, results in UAR of 65.0% and 70.0%, in the case of average and majority voting correspondingly.
机译:本文介绍了将集成学习技术和神经网络应用于语音流中的欺骗性和真实性陈述的语言分析的实验结果。在分析和比较解决此问题的不同方法的基础上,我们建议混合使用这些方法。真实生活中的欺骗检测数据集用于培训和测试。所有实验均使用10倍交叉验证进行。使用两层神经网络,k近邻,随机森林进行评估和主成分分析方法进行预处理,在平均投票和多数投票的情况下,UAR分别为65.0%和70.0%。

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