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Towards Modelling Insiders Behaviour as Rare Behaviour to Detect Malicious RDBMS Access

机译:将内部人员行为建模为罕见行为以检测恶意的RDBMS访问

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The heart of any enterprise is its databases where the application data is stored. Organizations frequently place certain access control mechanisms to prevent access by unauthorized employees. However, there is persistent concern about malicious insiders. Anomaly-based intrusion detection systems are known to have the potential to detect insider attacks. Accurate modelling of insiders behaviour within the framework of Relational Database Management Systems (RDBMS) requires attention. The majority of past research considers SQL queries in isolation when modelling insiders behaviour. However, a query in isolation can be safe, while a sequence of queries might result in malicious access. In this work, we consider sequences of SQL queries when modelling behaviours to detect malicious RDBMS accesses using frequent and rare item-sets mining. Preliminary results demonstrate that the proposed approach has the potential to detect malicious RDBMS accesses by insiders.
机译:任何企业的心脏都是其存储应用程序数据的数据库。组织经常放置某些访问控制机制,以防止未经授权的员工访问。但是,人们一直对恶意内部人员感到担忧。已知基于异常的入侵检测系统具有检测内部攻击的潜力。关系数据库管理系统(RDBMS)框架内的内部人行为的准确建模需要引起注意。过去的大多数研究都在对内部行为建模时将SQL查询隔离考虑。但是,隔离查询可能是安全的,而一系列查询可能会导致恶意访问。在这项工作中,当对行为进行建模以使用频繁和稀有项集挖掘来检测恶意RDBMS访问时,我们将考虑SQL查询的顺序。初步结果表明,该方法具有检测内部人员恶意RDBMS访问的潜力。

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