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P300-based deception detection of mock network fraud with modified genetic algorithm and combined classification

机译:基于P300的改进遗传算法和组合分类的模拟网络欺诈欺骗检测。

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To detect network fraud, a three-stimulus paradigm was used in a mock crime P300-based concealed information test. A P300-based deception detection method based on a modified genetic algorithm and a confidence-coefficient-based combined classifier was created for mock network fraud detection. After the multi-domain integrated signal preprocessing and feature extraction, a modified logistic equation based multi-population genetic algorithm was adopted for feature selection to obtain an optimal feature subset. Then the confidence coefficient was proposed to determine the classification difficulty levels of samples. A combined classifier based on confidence coefficient was proposed for classification. Compared with the component classifiers and other individual classifiers, the combined classifier requires 34% less computing time and the mean classification accuracy rate is 0.2 to 2.23 percentage points higher for twelve subjects using leave-one-out cross validation. Experiment results confirm that the proposed method is effective to detect deception during network fraud simulation.
机译:为了检测网络欺诈,在基于P300的模拟犯罪隐蔽信息测试中使用了三刺激范例。创建了一种基于P300的欺骗检测方法,该方法基于改进的遗传算法和基于置信度的组合分类器,用于模拟网络欺诈检测。经过多域集成信号预处理和特征提取后,采用改进的基于逻辑方程的多种群遗传算法进行特征选择,以获得最优的特征子集。然后提出置信系数来确定样本的分类难度等级。提出了一种基于置信度的组合分类器进行分类的方法。与组件分类器和其他单个分类器相比,组合分类器使用留一法交叉验证对十二个对象的平均分类准确率低了32%,平均分类准确率高0.2至2.23个百分点。实验结果证明,该方法可有效地检测网络欺诈仿真过程中的欺骗行为。

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