使用LibSVM训练工具进行异常检测

Chu-Hsing Lin, Jung-Chun Liu, Chia-Han Ho
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引用次数: 39

摘要

入侵检测是识别入侵行为,为被入侵系统提供有用信息,从而快速响应,避免或减少损害的一种手段。近年来,学习机技术经常被用作异常检测的一种检测方法。在本研究中,我们使用支持向量机作为异常检测的学习方法,并使用LibSVM作为支持向量机。通过使用该工具,我们摆脱了大量复杂的操作,无需使用外部工具根据需要查找参数,而可以使用其他算法,如遗传算法。实验结果表明,该方法具有较高的平均检测率和较低的平均误报率。
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Anomaly Detection Using LibSVM Training Tools
Intrusion detection is the means to identify the intrusive behaviors and provides useful information to intruded systems to respond fast and to avoid or reduce damages. In recent years, learning machine technology is often used as a detection method in anomaly detection. In this research, we use support vector machine as a learning method for anomaly detection, and use LibSVM as the support vector machine tool. By using this tool, we get rid of numerous and complex operation and do not have to use external tools for finding parameters as need by using other algorithms such as the genetic algorithm. Experimental results show that high average detection rates and low average false positive rates in anomaly detection are achieved by our proposed approach.
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