首页> 外文会议>SKLOIS Conference on Information Security and Cryptology(CISC 2005); 20051215-17; Beijing(CN) >Improvement of Detection Ability According to Optimum Selection of Measures Based on Statistical Approach
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Improvement of Detection Ability According to Optimum Selection of Measures Based on Statistical Approach

机译:基于统计方法的最优措施选择提高检测能力

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摘要

A selection of useful measures and a generation of rules for detecting attacks from network data are very difficult. Expert's experiences are commonly required to generate the detection rules. If the rules are generated automatically, we will reduce man-power, management expense, and complexity of intrusion detection systems. In this paper, we propose two methods for generating the detection rules. One method is the statistical method based on relative entropy that uses for selecting the useful measures for generating the accurate rules. The other is decision tree algorithm based on entropy theory that generates the detection rules automatically. Also we propose a method of converting the continuous measures into categorical measures because continuous measures are hard to analyze. As the result, the detection rules for attacks are automatically generated without expert's experiences. Also, we selected the useful measures by the proposed method.
机译:选择有用的措施以及生成规则以检测来自网络数据的攻击非常困难。生成检测规则通常需要专家的经验。如果自动生成规则,我们将减少人工,管理费用和入侵检测系统的复杂性。在本文中,我们提出了两种生成检测规则的方法。一种方法是基于相对熵的统计方法,该方法用于选择生成精确规则的有用度量。另一种是基于熵理论的决策树算法,可自动生成检测规则。另外,由于难以分析连续度量,我们提出了一种将连续度量转换为分类度量的方法。结果,无需专家的经验即可自动生成攻击检测规则。此外,我们通过提出的方法选择了有用的措施。

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