Combining extreme value theory with Bayesian methods offers several advantages, such as a quantification of uncertainty on parameter estimation or the ability to study irregular models that cannot be handled by frequentist statistics. However, it comes with many options that are left to the user concerning model building, computational algorithms, and even inference itself. Among them, the parameterization of the model induces a geometry that can alter the efficiency of computational algorithms, in addition to making calculations involved. We focus on the Poisson process characterization of extremes and outline two key benefits of an orthogonal parameterization addressing both issues. First, several diagnostics show that Markov chain Monte Carlo convergence is improved compared with the original parameterization. Second, orthogonalization also helps deriving Jeffreys and penalized complexity priors, and establishing posterior propriety. The analysis is supported by simulations, and our framework is then applied to extreme level estimation on river flow data.
翻译:将极端价值理论与巴伊西亚方法相结合,具有若干优势,例如对参数估计的不确定性进行量化,或研究常客统计无法处理的非常规模型的能力,然而,在模型建设、计算算法、甚至推论本身方面,它也有许多可供用户选择的选项。其中,模型的参数化引出几何学,除了进行相关的计算外,还能够改变计算算法的效率。我们侧重于Poisson过程对极端现象的定性,并概述了处理这两个问题的正方位参数化的两个主要好处。首先,一些诊断显示,与原始参数化相比,Markov链链 Monte Carlo趋同与原始参数化相比,Monte Carlo趋同有所改进。第二,正态化还有助于生成Jeffers和惩罚复杂性,以及建立后方特性。该分析得到模拟的支持,然后将我们的框架应用于对河流流量数据的极端水平估计。