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A multinomial logistic regression modeling approach for anomaly intrusion detection

机译:用于异常入侵检测的多项式逻辑回归建模方法

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摘要

Although researchers have long studied using statistical modeling techniques to detect anomaly intrusion and profile user behavior, the feasibility of applying multinomial logistic regression modeling to predict multi-attack types has not been addressed, and the risk factors associated with individual major attacks remain unclear. To address the gaps, this study used the KDD-cup 1999 data and bootstrap simulation method to fit 3000 multinomial logistic regression models with the most frequent attack types (probe, DoS, U2R, and R2L) as an unordered independent variable, and identified 13 risk factors that are statistically significantly associated with these attacks. These risk factors were then used to construct a final multinomial model that had an ROC area of 0.99 for detecting abnormal events. Compared with the top KDD-cup 1999 winning results that were based on a rule-based decision tree algorithm, the multinomial logistic model-based classification results had similar sensitivity values in detecting normal (98.3% vs. 99.5%), probe (85.6% vs. 83.3%), and DoS (97.2% vs. 97.1%); remarkably high sensitivity in U2R (25.9% vs. 13.2%) and R2L (11.2% vs. 8.4%); and a significantly lower overall misclassification rate (18.9% vs. 35.7%). The study emphasizes that the multinomial logistic regression modeling technique with the 13 risk factors provides a robust approach to detect anomaly intrusion.
机译:尽管研究人员长期以来一直在研究使用统计建模技术来检测异常入侵并描述用户行为,但尚未解决应用多项逻辑回归建模预测多种攻击类型的可行性,并且与个别重大攻击相关的风险因素仍不清楚。为了解决这些空白,本研究使用KDD-cup 1999数据和自举模拟方法拟合了3000个多项式Lo​​gistic回归模型,其中攻击类型最常见(探针,DoS,U2R和R2L)为无序自变量,并确定了13与这些攻击在统计上显着相关的危险因素。然后将这些风险因素用于构建最终的多项式模型,其ROC区域为0.99,用于检测异常事件。与基于规则决策树算法的1999年KDD杯最佳获胜结果相比,基于多项逻辑模型的分类结果在检测正常值和探测值方面具有相似的敏感度值(98.3%对99.5%)。 vs. 83.3%)和DoS(97.2%vs. 97.1%); U2R(25.9%vs. 13.2%)和R2L(11.2%vs. 8.4%)的灵敏度非常高;总体误分类率显着降低(18.9%比35.7%)。研究强调,具有13个风险因素的多项Logistic回归建模技术提供了一种检测异常入侵的可靠方法。

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