Cyber risk estimation is an essential part of any information technology system's design and governance since the cost of the system compromise could be catastrophic. An effective risk framework has the potential to predict, assess, and mitigate possible adverse events. We propose two methods for modelling Value-at-Risk (VaR) which can be used for any time-series data. The first approach is based on Quantile Autoregression (QAR), which can estimate VaR for different quantiles, i.e. confidence levels. The second method, called Competitive Quantile Autoregression (CQAR), dynamically re-estimates cyber risk as soon as new data becomes available. This method provides a theoretical guarantee that it asymptotically performs as well as any QAR at any time point in the future. We show that these methods can predict the size and inter-arrival time of cyber hacking breaches by running coverage tests. The proposed approaches allow to model a separate stochastic process for each significance level and therefore provide more flexibility compared to previously proposed techniques. We provide a fully reproducible code used for conducting the experiments.
翻译:有效的风险框架有可能预测、评估和减轻可能出现的不利事件。我们提出了两种方法,用于为任何时间序列数据建模 " 风险值 " (VaR),第一种方法是基于 " 量子自动递减 " (QAR) " (QAR),该方法可以估计不同孔径的VAR值,即信任度。第二种方法,称为 " 竞争性量子自动递增(CQAR) " (CQAR),一旦获得新的数据,就动态地重新估计网络风险。这种方法提供了理论上的保证,即它可以同时运行,在未来任何时间可以运行任何QAR(QAR)数据。我们表明,这些方法可以通过进行覆盖测试来预测网络黑客破损的大小和跨进入时间。拟议方法允许为每个重要级别建立单独的质疑程序(CQAR),因此与先前提出的技术相比,具有更大的灵活性。我们为进行实验提供了完全可重复的代码。我们为进行实验提供了一种完全可重复的代码。