A host-based real-time intrusion detection system with data mining and forensic techniques

Fang-Yie Leu, Tzu-Yi Yang
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引用次数: 7

Abstract

Host-based detective methods play an important role in developing an intrusion detection system (IDS). One of the major concerns of the development is its latency delay. Host-based IDS systems inspecting log files provided by operating systems or applications need more time to analyze log content. It demands a large number of computer resources, such as CPU time and memory. Besides, there still a crucial problem about how to transform human behavior into numbers so as measurement can be easily performed. In order to improve the problem addressed we promote IDS called host-based real time intrusion detection system (HRIDS). HRIDS monitors users' activities in a real-time aspect. By defining user profiles, we can easily find out the anomalies and malicious accesses instantly. With the help of user profiles, we cannot only find which account has been misused, but also realize the true intruders. There is no need to update the knowledge databases of HRIDS. It is a self-organized and self-training system. Furthermore, we discover cooperative attacks submitted by users at the same time by using data mining and forensic techniques.
基于数据挖掘和取证技术的主机实时入侵检测系统
基于主机的检测方法在入侵检测系统中起着重要的作用。开发的主要关注点之一是它的延迟。基于主机的IDS系统检查操作系统或应用程序提供的日志文件,需要更多的时间来分析日志内容。它需要大量的计算机资源,如CPU时间和内存。此外,如何将人的行为转化为数字,以便于测量,仍然是一个关键的问题。为了解决这个问题,我们提出了基于主机的实时入侵检测系统(hrid)。hrid实时监控用户的活动。通过定义用户配置文件,可以方便地及时发现异常和恶意访问。借助用户配置文件,我们不仅可以发现哪些帐户被滥用,还可以了解真正的入侵者。不需要更新hrid的知识库。它是一个自我组织和自我训练的系统。此外,我们利用数据挖掘和取证技术发现用户同时提交的合作攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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