A Content-Based Self-Feedback E-government Network Security Model

Songzhu Xia, Jianpei Zhang, Jing Yang, Jun Ni
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引用次数: 4

Abstract

Based on the theories of the intrusion trapping and natural language understanding, oriented e-government affairs security issues, this paper proposed a content-based self-feedback model at the point of attackers. By this model, the concrete information under attacking can be focused and the attack methods would be ignored in a standard honey trap. With the supporting of honey nets, The target sensitivity is taken as the appraisement factor to demonstrate whether the information need be protected. Through adjusting the primitive feedback coefficients of the model, we can know the most important information as the attackers focusing on. At the same time, this paper introduced the concept of domain coefficients of the model. Through the experiments in the actual networks, it is the first successful model being of the prediction and feedback for e-government affairs.
基于内容的自反馈电子政务网络安全模型
基于入侵陷阱理论和自然语言理解理论,针对电子政务安全问题,提出了一种基于内容的攻击点自反馈模型。通过该模型,可以集中攻击的具体信息,而忽略标准美人计中的攻击方法。在蜜网的支持下,以目标灵敏度作为评价因子来评价信息是否需要保护。通过调整模型的原始反馈系数,我们可以知道攻击者关注的最重要信息。同时,引入了模型域系数的概念。通过在实际网络中的实验,该模型是第一个成功的电子政务预测与反馈模型。
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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