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引用次数: 34

摘要

本文采用Dempster-Shafer方法实现了一个异常检测系统。通过使用两个标准基准问题,我们表明通过组合多个信号可以获得比使用单个信号更好的结果。我们进一步表明,通过将这种方法应用于现实世界的电子邮件数据集,该算法适用于电子邮件蠕虫检测。Dempster-Shafer对于具有多个特征(数据源)和两个或更多类的异常检测问题是一种很有前途的方法。
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Anomaly Detection Using the Dempster-Shafer Method
In this paper, we implement an anomaly detection system using the Dempster-Shafer method. Using two standard benchmark problems we show that by combining multiple signals it is possible to achieve better results than by using a single signal. We further show that by applying this approach to a real-world email dataset the algorithm works for email worm detection. Dempster-Shafer can be a promising method for anomaly detection problems with multiple features (data sources), and two or more classes.
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