会议专题

Application of Data Mining to Network Intrusion Detection:Classifier Selection Model

As network attacks have increased in number and severity over the past few years,intrusion detection system (IDS) is increasingly becoming a critical component to secure the network.Due to large volumes of security audit data as well as complex and dynamic properties of intrusion behaviors,optimizing performance of IDS becomes an important open problem that is receiving more and more attention from the research community.The uncertainty to explore if certain algorithms perform better for certain attack classes constitutes the motivation for the reported herein.In this paper,we evaluate performance of a comprehensive set of classifier algorithms using KDD99 dataset.Based on evaluation results,best algorithms for each attack category is chosen and two classifier algorithm selection models are proposed.The simulation result comparison indicates that noticeable performance improvement and real-time intrusion detection can be achieved as we apply the proposed models to detect different kinds of network attacks.

Data mining Machine learning Classifier Network security Intrusion detection Algorithm selection KDD dataset.

Huy Anh Nguyen Deokjai Choi

Chonnam National University,Computer Science Department,300 Yongbong-dong,Buk-ku,Gwangju 500-757,Korea

国际会议

11th Asia-Pacific Network Operations and Management Symposium(APNOMS 2008)(第十一届亚太网络运行和管理国际研讨会)

北京

英文

399-408

2008-10-22(万方平台首次上网日期,不代表论文的发表时间)