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Research on Cost-Sensitive Learning in One-Class Anomaly Detection Algorithms

机译:一类异常检测算法中的成本敏感学习研究

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According to the Cost-Sensitive Learning Method, two improved One-Class Anomaly Detection Models using Support Vector Data Description (SVDD) are put forward in this paper. Improved Algorithm is included in the Frequency-Based SVDD (F-SVDD) Model while Input data division method is used in the Write-Related SVDD (W-SVDD) Model. Experimental results show that both of the two new models have a low false positive rate compared with the traditional one. The true positives increased by 22% and 23% while the False Positives decreased by 58% and 94%, which reaches nearly 100% and 0% respectively. And hence, adjusting some parameters can make the false positive rate better. So using Cost-Sensitive method in One-Class Problems may be a future orientation in Trusted Computing area.
机译:根据成本敏感学习方法,提出了两种基于支持向量数据描述(SVDD)的改进的一类异常检测模型。基于频率的SVDD(F-SVDD)模型中包含改进的算法,而与写入相关的SVDD(W-SVDD)模型中使用输入数据划分方法。实验结果表明,与传统模型相比,这两种新模型的误报率均较低。真假阳性分别增加22%和23%,假假阳性减少58%和94%,分别达到近100%和0%。因此,调整一些参数可以使误报率更好。因此,在“一类问题”中使用“成本敏感”方法可能是可信计算领域的未来方向。

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