基于匹配范围模型的t检测器成熟算法

Jungan Chen
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引用次数: 3

摘要

采用负选择算法生成检测器,用于变化检测、异常检测。但由于必须先设置匹配阈值,因此不能适应自身数据的变化。为了解决这一问题,我们提出了基于t细胞成熟的I-TMA-GA和TMA-MRM。而采用遗传算法对探测器种群进行最小自最大值进化。为了实现非自我的最大覆盖,本文采用遗传算法对自最大值和自最小匹配范围的检测器种群进行进化。提出了一种基于最小匹配距离模型的增强算法——t检测器成熟算法。通过仿真实验对该算法进行了异常检测测试,并与NSA、I-TMA-GA和TMA-MRM进行了比较。结果表明,该算法比其他算法更有效
本文章由计算机程序翻译,如有差异,请以英文原文为准。
T-detectors Maturation Algorithm with in-Match Range Model
Negative selection algorithm is used to generate detector for change detection, anomaly detection. But it can not be adapted to the change of self data because the match threshold must be set at first. To solve the problem, I-TMA-GA and TMA-MRM inspired from the maturation of T-cells are proposed. But genetic algorithm is used to evolve the detector population with minimal selfmax. In this paper, to achieve the maximal coverage of nonselves, genetic algorithm is used to evolve the detector population with minimal match range with selfmax and selfmin. An augmented algorithm called T-detectors maturation algorithm based on min-match range model is proposed. The proposed algorithm is tested by simulation experiment for anomaly detection and compared with NSA, I-TMA-GA and TMA-MRM. The results show that the proposed algorithm is more effective than others
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