Statistical inference for extreme values of random events is difficult in practice due to low sample sizes and inaccurate models for the studied rare events. If prior knowledge for extreme values is available, Bayesian statistics can be applied to reduce the sample complexity, but this requires a known probability distribution. By working with the quantiles for extremely low probabilities (in the order of $10^{-2}$ or lower) and relying on their asymptotic normality, inference can be carried out without assuming any distributions. Despite relying on asymptotic results, it is shown that a Bayesian framework that incorporates prior information can reduce the number of observations required to estimate a particular quantile to some level of accuracy.
翻译:随机事件极端值的统计推论在实践中很困难,因为抽样规模小,而且所研究的罕见事件模型不准确。如果事先掌握极端值知识,可以应用贝叶斯统计来降低抽样复杂性,但这需要已知的概率分布。通过与四分位数合作,极低概率(约10 ⁇ -2美元或更低 ), 并依靠其无药可治的正常性, 可以在不假定任何分布的情况下进行推论。 尽管依靠无药可治的结果,但可以证明,纳入事先信息的巴耶斯框架可以将估计特定量所需的观测数量降低到某种准确程度。