Dendritic Cell Algorithm with Optimised Parameters Using Genetic Algorithm

Noe Elisa, Longzhi Yang, N. Naik
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引用次数: 24

Abstract

Intrusion detection systems are developed with the abilities to discriminate between normal and anomalous traffic behaviours. The core challenge in implementing an intrusion detection systems is to determine and stop anomalous traffic behavior precisely before it causes any adverse effects to the network, information systems, or any other hardware and digital assets which forming or in the cyberspace. Inspired by the biological immune system, Dendritic Cell Algorithm (DCA) is a classification algorithm developed for the purpose of anomaly detection based on the danger theory and the functioning of human immune dendritic cells. In its core operation, DCA uses a weighted sum function to derive the output cumulative values from the input signals. The weights used in this function are either derived empirically from the data or defined by users. Due to this, the algorithm opens the doors for users to specify the weights that may not produce optimal result (often accuracy). This paper proposes a weight optimisation approach implemented using the popular stochastic search tool, genetic algorithm. The approach is validated and evaluated using the KDD99 dataset with promising results generated.
利用遗传算法优化参数的树突状细胞算法
入侵检测系统具有区分正常和异常流量行为的能力。实施入侵检测系统的核心挑战是在异常流量行为对网络、信息系统或任何其他形成或存在于网络空间的硬件和数字资产造成任何不利影响之前,准确地确定和阻止异常流量行为。树突状细胞算法(Dendritic Cell Algorithm, DCA)是受生物免疫系统的启发,基于危险理论和人体免疫树突状细胞的功能,为异常检测而开发的一种分类算法。在其核心操作中,DCA使用加权和函数从输入信号中导出输出累积值。该函数中使用的权重要么是根据经验从数据中导出的,要么是由用户定义的。因此,该算法为用户指定可能无法产生最佳结果(通常是准确性)的权重打开了大门。本文提出了一种使用流行的随机搜索工具遗传算法实现的权重优化方法。使用KDD99数据集对该方法进行了验证和评估,并产生了有希望的结果。
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