Network programming and mining classifier for intrusion detection using probability classification

P. Prasenna, A. V. T. RaghavRamana, R. Krishnakumar, A. Devanbu
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引用次数: 25

Abstract

In conventional network security simply relies on mathematical algorithms and low counter measures to taken to prevent intrusion detection system, although most of this approaches in terms of theoretically challenged to implement. Therefore, a variety of algorithms have been committed to this challenge. Instead of generating large number of rules the evolution optimization techniques like Genetic Network Programming (GNP) can be used. The GNP is based on directed graph, In this paper the security issues related to deploy a data mining-based IDS in a real time environment is focused upon. We generalize the problem of GNP with association rule mining and propose a fuzzy weighted association rule mining with GNP framework suitable for both continuous and discrete attributes. Our proposal follows an Apriori algorithm based fuzzy WAR and GNP and avoids pre and post processing thus eliminating the extra steps during rules generation. This method can sufficient to evaluate misuse and anomaly detection. Experiments on KDD99Cup and DARPA98 data show the high detection rate and accuracy compared with other conventional method.
基于概率分类的入侵检测网络规划与挖掘分类器
传统的网络安全仅仅依靠数学算法和较低的防御措施来采取入侵检测系统,尽管大多数这种方法在理论上难以实现。因此,各种各样的算法都致力于解决这一挑战。可以使用遗传网络规划(GNP)等进化优化技术来代替生成大量规则。本文重点研究了在实时环境中部署基于数据挖掘的入侵检测系统的安全问题。将关联规则挖掘广义化GNP问题,提出了一种适用于连续属性和离散属性的模糊加权关联规则挖掘框架。我们的建议遵循基于模糊WAR和GNP的Apriori算法,避免了预处理和后处理,从而消除了规则生成过程中的额外步骤。该方法可以充分评估误用和异常检测。在KDD99Cup和DARPA98数据上的实验表明,与其他常规方法相比,该方法具有较高的检出率和准确率。
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