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引用次数: 1

摘要

负选择算法(NSA)是一种用于异常检测的人工免疫系统。NSA的三个缺点是生成检测器的指数成本、设置匹配阈值的难度以及真实和期望的缺失检测率之间的偏差。针对这些不足,提出了一种新的结合免疫网络理论的负选择算法。定义了可变阈值的匹配规则,采用克隆选择快速成熟与自身相似度较低的检测器并自适应获得检测器的匹配阈值,采用免疫网络理论优化成熟检测器的分布,提高检测率。实验表明,NSA-IN可以自动设置匹配阈值,是生成检测器的线性代价,减小了真实和期望的缺失检测率之间的偏差。在RFID异常检测案例中,NSA- In的平均漏检率为0.098,低于NSA的0.234。
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A Negative Selection Algorithm Integrated with Immune Network Theory
Negative Selection Algorithm (NSA) is an artificial immune system for anomaly detection. Three weaknesses in NSA are the exponential cost of generating detectors, the difficulty to set the matching threshold, and the deviation between the real and the expected miss detection rate. To improve these weaknesses, a new Negative Selection Algorithm Integrated with Immune Network theory (NSA-IN) was proposed. A matching rule with variable threshold was defined, and clonal selection was adopted to rapidly mature the detectors with low similarity to self bodies and self-adaptively get the matching threshold of detectors, and immune network theory was adopted to optimize the distribution of mature detectors and improve detection rate. Experiments show that, NSA-IN can automatically set the matching threshold, and is the linear cost of generating detectors, and reduces the deviation between the real and the expected miss detection rate. In RFID anomaly detection case, the average miss detection rate of NSA-IN is 0.098, and is lower than that of NSA 0.234.
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