基于神经网络的网络安全生物学启发风险评估

Mihai-Gabriel Ionita, V. Patriciu
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引用次数: 6

摘要

目前,考虑到实时约束的风险评估系统的唯一合适选择似乎是基于攻击图的风险评估系统。尽管它在计算上并不适用于每一种情况,但它对于通常的用例来说是足够灵活的。论文[8]提出了一种基于攻击图的有趣方法。攻击图是一个表示攻击者所有可能的行动序列的图,这些行动将导致他/她达到既定目标。这些动作序列也被称为攻击轨迹。这种方法的主要缺点是计算复杂度高。因此,攻击建模不仅需要表示动作序列,还需要表示攻击影响,以及对策如何减轻这种影响以及代价是什么。然而,人体以免疫系统为基础,每秒钟都在计算风险,以便在不妨碍正常细胞运作的情况下,对外来威胁做出正确的免疫反应。为什么我们不在网络防御系统中使用这种行为呢?将分散在受保护主机上的本地代理收集的信息关联起来,将Matzinger的危险理论与遇险信号的关键概念应用于风险评估似乎是合乎逻辑的决定,因为它消耗了大量资源,并且具有分类性质,可以快速定义攻击面。作为支持这一想法的概念证明,建立了一个前馈向后传播的神经网络来关联安装在远程受保护主机上的代理的威胁数据。这种智能系统可以评估发生网络攻击的风险,并及时将防御系统带入警报状态,从而有助于对攻击者做出快速反应。
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Biologically inspired risk assessment in cyber security using neural networks
The only suitable option for risk assessment systems designed with real-time constraints in mind, in the present seems to be the one based on attack graphs. Even though it is not computationally feasible for every circumstance, it is elastic enough for the usual use case. Paper [8] proposes an interesting approach based on attack graphs. An attack graph is a graph that represents all possible sequences of the attacker's actions that lead him/her to the established goals. These action sequences are also called attack traces. The main disadvantage of this approach is its high computational complexity. Thus, attack modeling needs to represent not only the sequences of actions, but also the attack impact, as well as how countermeasures can mitigate this impact and at which cost. However, the human body, based on the immune system, calculates risk every second for offering the correct manner of immune response to foreign threats, without hampering normal cell operation. Why don't we use this behavior in cyber defense systems? Applying Matzinger's danger theory, with the key concept of a distress signal, involved in risk assessment seems to be the logical decision, due to its lite resource consumption and categorical nature, which rapidly defines an attack surface, when correlating information gathered from local agents dispersed on protected hosts. As a proof of concept in favor of supporting this idea, a feed-forward backward-propagating neural network was setup to correlate threat data from agents installed on remote protected hosts. This intelligent system assesses the risk of a cyber-attack taking place and bringing the defense systems to an alarmed state in a timely manner, which can help offer a quick response against an attacker.
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