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Decision Support for Security-Control Identification Using Machine Learning

机译:使用机器学习对安全控制识别的决策支持

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[Context & Motivation] In many domains such as healthcare and banking, IT systems need to fulfill various requirements related to security. The elaboration of security requirements for a given system is in part guided by the controls envisaged by the applicable security standards and best practices. [Problem] An important difficulty that analysts have to contend with during security requirements elaboration is sifting through a large number of security controls and determining which ones have a bearing on the security requirements for a given system. This challenge is often exacerbated by the scarce security expertise available in most organizations. [Principal ideas/results] In this paper, we develop automated decision support for the identification of security controls that are relevant to a specific system in a particular context. Our approach, which is based on machine learning, leverages historical data from security assessments performed over past systems in order to recommend security controls for a new system. We operationalize and empirically evaluate our approach using real historical data from the banking domain. Our results show that, when one excludes security controls that are rare in the historical data, our approach has an average recall of ≈95% and average precision of ≈67%. [Contribution] The high recall - indicating only a few relevant security controls are missed - combined with the reasonable level of precision - indicating that the effort required to confirm recommendations is not excessive - suggests that our approach is a useful aid to analysts for more efficiently identifying the relevant security controls, and also for decreasing the likelihood that important controls would be overlooked.
机译:[语境和动机]在医疗保健和银行等许多域中,IT系统需要满足与安全相关的各种要求。对给定系统的安全要求的制定部分是由适用的安全标准和最佳实践所设想的控件的部分。 [问题]分析师必须在安全要求期间竞争的重要困难是通过大量的安全控制来筛选和确定哪些安全要求对给定系统的安全要求。大多数组织中可用的稀缺安全专业知识往往加剧了这一挑战。 [主要思想/结果]在本文中,我们开发了自动决策支持,以确定与特定上下文中的特定系统相关的安全控制。我们的方法是基于机器学习,利用过去系统执行的安全评估的历史数据,以便为新系统推荐安全控制。我们使用来自银行领域的真实历史数据进行操作化并经验评估我们的方法。我们的结果表明,当一个人排除历史数据中罕见的安全控制时,我们的方法平均召回≈65%,平均精度为≈67%。 [贡献]高召回 - 表明只错过了一些相关的安全控制 - 结合了合理的精度水平 - 表明确认建议所需的努力不是过度 - 表明我们的方法是对分析师更有效的有用援助确定相关的安全控制,以及降低重要控制将被忽视的可能性。

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