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Cyber Maintenance Policy Optimization via Adaptive Learning

机译:网络维护政策优化通过自适应学习

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We develop a data-driven adaptive control framework to password management in cyber security systems. A password policy is the frontline of protection against cyber attacks, which contains a set of rules on password length, duration, etc. We assume password has censored lifetime, and policy maker determines the duration of the password without complete knowledge of its true lifetime distribution. We develop a gradient based algorithm integrated with a Bayesian learning framework. We show that our algorithm converges to optimal solution and adapts to non-stationary lifetime data.
机译:我们在网络安全系统中开发数据驱动的自适应控制框架到密码管理。密码策略是针对网络攻击保护的前线,其中包含一组密码长度,持续时间等规则。我们假设密码已被审议审议了一生,并且策略制作者确定密码的持续时间,而无需完全了解其真实的终身分布。我们开发了一种与贝叶斯学习框架集成的梯度算法。我们表明我们的算法会聚到最佳解决方案并适应非静止的寿命数据。

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