Yi, Mon Aye, Phyu, Thandar
Abstract: Due to continuous growth of the Internet technology, it needs to establish security mechanism. Intrusion Detection System (IDS) is increasingly becoming a crucial component for computer and network security systems. Most of the existing intrusion detection techniques emphasize on building intrusion detection model based on all features provided. Some of these features are irrelevant or redundant. This paper is proposed to identify important input features in building IDS that is computationally efficient and effective. In this paper, we identify important attributes for each attack type by analyzing the detection rate. We input the specific attributes for each attack types to classify using Nave Bayes, and Random Forest. We perform our experiments on NSL-KDD intrusion detection dataset, which consists of selected records of the complete KDD Cup 1999 intrusion detection dataset.
Keywords: security mechanism, Intrusion Detection System, Nave Bayes, Random Forest