欺骗检测中的不确定性建模与处理

Lina Zhou, A. Zenebe
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引用次数: 4

摘要

欺骗检测由于其模糊性和不精确性而充满了不确定性。为了解决上述问题,我们开发了欺骗检测中的不确定性模型(MUDD),并选择了神经模糊分类器来预测欺骗。神经模糊模型将模糊集和处理不确定性的逻辑与人工神经网络相结合,从数据中学习DD模型。利用同步计算机中介通信中收集的欺骗数据对模型的性能进行了实证检验。结果表明,神经模糊模型的性能与传统机器学习范式的最佳模型相当。此外,它们具有更好的可解释性、稳定性和可靠性。本研究对欺骗研究具有重要的理论、数学和实践意义。
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Modeling and Handling Uncertainty in Deception Detection
Deception detection (DD) is infused with uncertainty due to vagueness and imprecision. To address the above issue, we developed a Model of Uncertainty in Deception Detection (MUDD) and selected the Neuro-Fuzzy classifier to predict deception. A Neuro-fuzzy model integrates the fuzzy set and logic for handling uncertainty with artificial neural network for learning DD models from the data. The performance of the models was empirically tested with deception data collected from synchronous computer-mediated communication. The results show that the performance of the Neuro-fuzzy model is comparable to that of the best model from the traditional machine learning paradigm. Moreover, they have better interpretability, stability, and reliability. We can draw significant theoretical, mathematical, and practical implications to the deception research from this study.
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