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引用次数: 0

摘要

恶意软件的数量和多样性不断增长,而使用相同的基本攻击技术。防火墙是网络安全的关键组件,它根据预定义的安全规则过滤入站和出站网络数据包。尽管防火墙可以有效防御某些攻击,但它们也存在安全缺陷,可以在其他情况下加以利用。本文提出了一种基于本体的语义防火墙和机器学习算法,可以有效地增强防火墙,保护局域网。本文提出了一种基于本体的语义防火墙模型,以验证其有效性。本文使用的方法基于描述逻辑推理器、本体api和语义Web语言(OWL和SWRL)。本文提出的语义防火墙基于一套基于本体模型的保护规则进行异常检测决策。结果表明,该方法的检测准确率达到93%。得出的结论是,所提出的本体分类器提供了一个可理解的语义防火墙(SWF)模型,该模型提供了坦诚和人类可解释的决策规则,与其他机器学习模型一样。
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The Protection of LAN Using Semantic Firewalls
The amount and diversity of malware keeps growing while the same basic attack techniques are being used. A firewall is a network security key component that filters inbound and outbound network packets as per predefined security rules. Even though firewalls are an effective defense against some attacks, they have security flaws that can be leveraged in other circumstances. In the present work, it is claimed that an ontology-based semantic firewall and machine learning algorithms can effectively enhance the firewall and protect the LAN. This paper proposes an ontology-based model for the semantic firewall as an effort to explore its effectiveness. The method used in this paper is based on Description Logic (DL) Reasoners, Ontology APIs, and Semantic Web Languages (OWL and SWRL). The proposed semantic firewall takes its decisions of anomalies detection based on a set of protection rules of the ontology-based model. As a result, the proposed approach achieves a detection accuracy of 93%. The conclusion is drawn that the presented ontology classifier gives an understandable model of a semantic firewall (SWF) that offers candid and human-interpretable decision rules, as with other machine learning models.
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