The model of network security situation assessment based on random forest

Yunhu Jin, Yongjun Shen, Guidong Zhang, Hua Zhi
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引用次数: 10

Abstract

Before, people focused on how to judge the network security situation by expert experience. In order to accurately assess the security posture of networks in real time, we proposed a network security situation assessment model based on random forest (RF). This model is based on the idea of multiple classifiers combination, constituted by the decision tree, each tree relies on independent samples, and all trees in a forest with the same values of the distribution of the random vector. When classifying, each tree to vote and return the class with the most votes, which makes network security situation assessment is more objective and accurate. Experiments show that this model can be quicker and more accurate to assess your current network security situation compared with Bayesian network.
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基于随机森林的网络安全态势评估模型
以前,人们关注的是如何通过专家经验来判断网络安全状况。为了实时准确地评估网络安全态势,提出了一种基于随机森林的网络安全态势评估模型。该模型基于多分类器组合的思想,由决策树构成,每棵树依赖于独立的样本,并且同一森林中的所有树具有相同值的随机向量的分布。在分类时,每棵树进行投票,并返回票数最多的类,这使得网络安全态势评估更加客观和准确。实验表明,与贝叶斯网络相比,该模型可以更快、更准确地评估你当前的网络安全状况。
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