作者
Kamarularifin Abd Jalil, Muhammad Hilmi Kamarudin, Mohamad Noorman Masrek
发表日期
2010/6/11
研讨会论文
2010 international conference on networking and information technology
页码范围
221-226
出版商
IEEE
简介
Organization has come to realize that network security technology has become very important in protecting its information. With tremendous growth of internet, attack cases are increasing each day along with the modern attack method. One of the solutions to this problem is by using Intrusion Detection System (IDS). Machine Learning is one of the methods used in the IDS. In recent years, Machine Learning Intrusion Detection system has been giving high accuracy and good detection on novel attacks. In this paper the performance of a Machine Learning algorithm called Decision Tree (J48) is evaluated and compared with two other Machine Learning algorithms namely Neural Network and Support Vector Machines which has been conducted by A. Osareh [1] for detecting intrusion. The algorithms were tested based on accuracy, detection rate, false alarm rate and accuracy of four categories of attacks. From the …
引用总数
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学术搜索中的文章
K Abd Jalil, MH Kamarudin, MN Masrek - 2010 international conference on networking and …, 2010