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A new clonal selection algorithm based on radius regularization of anomaly detectors

机译:一种基于异常检测器半径正则化的克隆选择新算法

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Nowadays anomaly detection based on Artificial Immune system (AIS) is highly regarded among the research community and Clonal selection algorithm is one of the most interesting fields of it. In this paper we model self-region by a number of spheres with fix radius. We have assumed anomaly detectors as spherical shape with random central point and variable radius out of this region. Detection rate (DR) and false alarm (FA) are influenced by radius of Detectors. Large radiuses would increase both DR and FA and small radiuses would decrease them, so selecting appropriate quantity plays an important role for achieving high accuracy in recognition. The radius of detectors is determined based on self-environment. The radius of self-region spheres has straight effect on detectors radiuses and is an important parameter to achieve high accuracy. As a result of finding imperfect self-region radius we have faced weak detectors that couldn't recognize anomaly perfectly. In this paper we propose a novel algorithm to achieve suitable accuracy independent of self-region radius using learning automata.
机译:如今,基于人工免疫系统(AIS)的异常检测在研究界已得到高度重视,而克隆选择算法是其中最有趣的领域之一。在本文中,我们通过固定半径的多个球对自区域建模。我们已将异常检测器假定为球形,其中心点随机且半径可变,超出了该区域。检测率(DR)和错误警报(FA)受探测器半径的影响。大半径会增加DR和FA,小半径会减小DR和FA,因此选择适当的数量对于实现高精度识别起着重要作用。检测器的半径基于自身环境确定。自区域球体的半径直接影响探测器的半径,是实现高精度的重要参数。由于发现了不完美的自身区域半径,我们遇到了无法完美识别异常的弱检测器。在本文中,我们提出了一种新颖的算法,该算法可使用学习自动机来实现独立于自身区域半径的合适精度。

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