利用O-MaSE方法设计基于MAS的高效入侵检测,学习新的攻击

Mohssine El Ajjouri, S. Benhadou, H. Medromi
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引用次数: 1

摘要

入侵检测体系结构中使用的代理具有委托、协作和通信等多重特征。然而,代理的一个重要属性:学习没有被使用。学习的概念在现有的ids中一般用于学习系统的正常行为以确保安全。为此,在专门的训练阶段构建正常的配置文件,然后将这些配置文件与当前活动进行比较。因此,IDS不具备检测新攻击的能力。在本文中,我们提出了一种新的基于MAS的入侵检测体系结构,增加了与新的攻击模式相对应的异常行为的学习特征。为了学习新的攻击,该体系结构必须首先检测并更新攻击模式基础。对于检测步骤,采用基于案例推理(Case-Based Reasoning, CBR)的方法。所提出的体系结构基于分层和分布式策略,其中特征被结构化并分离到层中。之后,我们将重点放在我们的多智能体系统架构的建模上,为了简单起见,我们使用了O-MaSE方法。
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Use of O-MaSE methodology for designing efficient intrusion detection based on MAS to learn new attacks
The agents used in the intrusion detection architectures have multiple characteristics namely delegation, cooperation and communication. However, an important property of agents: learning is not used. The concept of learning in existing IDSs used in general to learn the normal behavior of the system to secure. For this, normal profiles are built in a dedicated training phase, these profiles are then compared with the current activity. Thus, the IDS does not have the ability to detect new attacks., In this paper, we propose a new architecture for intrusion detection based in MAS adding a learning feature abnormal behaviors that correspond to new attack patterns. To learn a new attack, the architecture must detect at first and then update the base of attack patterns. For the detection step, the approach adopted is based on the technique of Case-Based Reasoning (CBR). The proposed architecture is based on a hierarchical and distributed strategy where features are structured and separated into layers., We focus after on the modeling of our Multi agent systems Architecture, for reasons of simplicity, we use the methodology O-MaSE.
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