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Dynamic security policy learning

机译:动态安全政策学习

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摘要

Recent research [12] has suggested that traditional top down security policy models are too rigid to cope with changes in dynamic operational environments. There is a need for greater flexibility in security policies to protect information appropriately and yet still satisfy operational needs. Previous work has shown that security policies can be learnt from examples using machine learning techniques. Given a set of criteria of concern, one can apply these techniques to learn the policy that best fits the criteria. These criteria can be expressed in terms of high level objectives, or characterised by the set of previously seen decision examples. We argue here that even if an optimal policy could be learnt automatically, it will eventually become sub-optimal over time as the operational requirements change. The policy needs to be updated continually to maintain its optimality. This paper proposes two dynamic security policy learning frameworks
机译:最近的研究[12]建议,传统的顶级安全政策模型太僵硬,无法应对动态运营环境的变化。需要更大的安全策略灵活性,以适当保护信息,但仍然满足操作需求。以前的工作表明,可以使用机器学习技术从示例中学到安全策略。鉴于一系列关注的标准,人们可以应用这些技术来学习最适合标准的政策。这些标准可以以高级别目标表达,或者以先前所见的决策示例的集合表达。我们在这里争辩说,即使可以自动学习最佳政策,随着运营要求的变化,它最终会随着时间的推移而变得最佳。策略需要不断更新以保持最优性。本文提出了两个动态安全策略学习框架

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