一种基于免疫的异常检测方法

Jie Zeng, Jinquan Zeng
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引用次数: 4

摘要

人体免疫系统由一组复杂的细胞和分子组成,保护器官免受感染。由于人体分布着许多不同种类的淋巴细胞(B细胞、T细胞等),因此人体免疫系统可以区分“非我”和“非我”,然后立即消灭“非我”。根据人体免疫系统的原理,提出了一种基于免疫的异常检测方法。在NIAD中,给出了自我、非自我、检测器、免疫耐受等概念的形式化定义。然后,引入检测器分集的定量描述,以提高记忆检测器的生成效率,减少记忆检测器的数量,扩大非自空间的覆盖范围。此外,免疫反应被描述。为了确定NIAD的性能,对不同的异常检测方法,如负选择算法(NSM)、多级免疫学习算法(MILA)和变大小检测器算法(v -检测器)进行了实验比较。实验表明,该方法具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Immunity-Based Anomaly Detection Method
The human immune system consists of a complex set of cells and molecules that protect organs against infection. With many different kinds of lymphocytes (B cell, T cell and so on) distributing all over the human body, the human immune system can distinguish nonself from self and then eliminate nonself immediately. According to the principles of human immune system, a novel immunity-based anomaly detection method (NIAD) is presented. In NIAD, the formal definitions of self, nonself, detectors, immune tolerance, and etc., are given. Then, the quantitative description of the detector diversity is introduced to improve the generating efficiency of memory detectors, to reduce the number of memory detectors and to enlarge the coverage of nonself space. Furthermore, immune response is described. To determine the performance of NIAD, the experiments comparing with different anomaly detection methods, such as negative selection algorithm (NSM), multilevel immune learning algorithm (MILA), and variable sized detectors algorithm (V-detector), were performed. Experiments show that NIAD has a better performance than previous methods.
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