Cybersecurity has been a concern for quite a while now. In the latest years, cyberattacks have been increasing in size and complexity, fueled by significant advances in technology. Nowadays, there is an unavoidable necessity of protecting systems and data crucial for business continuity. Hence, many intrusion detection systems have been created in an attempt to mitigate these threats and contribute to a timelier detection. This work proposes an interpretable and explainable hybrid intrusion detection system, which makes use of artificial intelligence methods to achieve better and more long-lasting security. The system combines experts' written rules and dynamic knowledge continuously generated by a decision tree algorithm as new shreds of evidence emerge from network activity.
翻译:近些年来,网络攻击的规模和复杂性一直在增加,技术的显著进步也推动了网络攻击。如今,不可避免地需要保护对业务连续性至关重要的系统和数据。因此,建立了许多入侵探测系统,以减轻这些威胁,促进更及时的探测。这项工作提出了一个可以解释和解释的混合入侵探测系统,该系统利用人工智能方法实现更好、更长久的安全。该系统结合了专家书面规则和动态知识,这些知识是决策树算法随着网络活动产生的新证据碎片而不断产生的。