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A novel radius adaptive hybrid detector generation algorithm

机译:一种新型半径自适应混合检测器生成算法

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Artificial immune algorithms have been widely used in anomaly detection. Negative selection algorithm (NSA) is one of the most popular detector generation algorithms. However NSA has problems such as large detector size, high overlapping rate and low detection efficiency etc. In order to reduce its overlap rate and detector size in guarantee of high detection efficiency, a novel radius adaptive hybrid detector generation algorithm is proposed, abbreviated as RAH-NSA. In order to reduce the number of self-detectors, the number of self-samples in different directions are evaluated of various radius to make sure the generated detector could cover each direction as possible. Based on the principle that self-set edge will make the number of self-set less in a certain direction, the radius of self-detector is self-adaptive. In this way, the number of self-detectors and the overlapping rate could be reduced sharply. For each non-self-detector, distance from sample self is calculated as its radius threshold to reduce the number of self-samples and false alarm rate. And non-self detector centers are automatically generated by normalized endpoints. Shortest distance from the initially detector is used to generate two new negative detectors, whose radius are bigger to reduce the overlapping rate and the number of detector. Finally both self-detector and negative detector are applied as hybrid detectors for data sets detection. When the data sample belongs to self-detector means it's normal, while either detector includes test sample or the test sample belongs to the nearest one. Simulation results testify that proposed RAH-NSA has higher detector accuracy while reducing the negative detector size and overlapping rate compared with other classic detector generation algorithms without obvious execution time increase. (C) 2017 Published by Elsevier GmbH.
机译:人工免疫算法已广泛用于异常检测。否定选择算法(NSA)是最受欢迎的检测器生成算法之一。然而,NSA具有大量检测器尺寸,高重叠率和低检测效率等问题,以减少其重叠速率和检测器尺寸,以保证高检测效率,提出了一种新的半径自适应混合检测器生成算法,缩写为RAH -NSA。为了减少自检测器的数量,评估不同方向上的自动样品的数量,以确保所产生的检测器可以尽可能地覆盖每个方向。基于自动设定边缘将在一定方向上使自动设置的数量更少的原则,自检测器的半径是自适应的。以这种方式,自检测器的数量和重叠率可以急剧地降低。对于每个非自动检测器,从样本自拍的距离计算为其半径阈值,以减少自样的数量和误报率。非自我探测器中心由归一化端点自动生成。距离初始探测器的最短距离用于生成两个新的负探测器,其半径更大,以降低重叠速率和检测器的数量。最后,将双检测器和负探测器应用于用于数据集检测的混合检测器。当数据样本属于自检测器时意味着它是正常的,而检测器包括测试样本或测试样本属于最接近的。仿真结果证明了所提出的RAH-NSA具有更高的检测器精度,同时降低了与其他经典检测器生成算法相比的负探测器尺寸和重叠速率,而没有明显的执行时间增加。 (c)2017年由elestvier GmbH发布。

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