Improved Genetic Algorithm for Intrusion Detection System

Dheeraj Pal, A. Parashar
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引用次数: 24

Abstract

Intrusion detection is one of the important security constraints for maintaining the integrity of information. Various approaches have been applied in past that are less effective to curb the menace of intrusion. The purpose of this paper is to provide an intrusion detection system (IDS), by modifying the genetic algorithm to network intrusion detection system. As we have applied attribute subset reduction on the basis of Information gain. So the training time and complexity reduced considerably. Moreover, we embedded a soft computing approach in rule generation makes the rule more efficient than hard computing approach used in existing genetic algorithm. Generated rule can detect attack with more efficiency. This model was verified using KDD'99 data set. Empirical result clearly shows the higher detection rates and low false positive rates.
入侵检测系统的改进遗传算法
入侵检测是维护信息完整性的重要安全约束之一。过去已经采用了各种方法,但这些方法对遏制入侵的威胁效果较差。本文的目的是提供一个入侵检测系统(IDS),通过修改遗传算法来实现网络入侵检测系统。由于我们在信息增益的基础上应用了属性子集约简。从而大大降低了训练时间和复杂度。此外,我们在规则生成中嵌入了软计算方法,使规则生成比现有遗传算法中使用的硬计算方法更高效。生成的规则可以更有效地检测攻击。利用KDD'99数据集对该模型进行了验证。实证结果清楚地显示出较高的检出率和较低的假阳性率。
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