Precisely estimating out-of-sample upper quantiles is very important in risk assessment and in engineering practice for structural design to prevent a greater disaster. For this purpose, the generalized extreme value (GEV) distribution has been broadly used. To estimate the parameters of GEV distribution, the maximum likelihood estimation (MLE) and L-moment estimation (LME) methods have been primarily employed. For a better estimation using the MLE, several studies considered the generalized MLE (penalized likelihood or Bayesian) methods to cooperate with a penalty function or prior information for parameters. However, a generalized LME method for the same purpose has not been developed yet in the literature. We thus propose the generalized method of L-moment estimation (GLME) to cooperate with a penalty function or prior information. The proposed estimation is based on the generalized L-moment distance and a multivariate normal likelihood approximation. Because the L-moment estimator is more efficient and robust for small samples than the MLE, we reasonably expect the advantages of LME to continue to hold for GLME. The proposed method is applied to the stationary and nonstationary GEV models with two novel (data-adaptive) penalty functions to correct the bias of LME. A simulation study indicates that the biases of LME are considerably corrected by the GLME with slight increases in the standard error. Applications to US flood damage data and maximum rainfall at Phliu Agromet in Thailand illustrate the usefulness of the proposed method. This study may promote further work on penalized or Bayesian inferences based on L-moments.
翻译:精确估计样本外上分位数对于风险评估以及防止更大灾难的结构设计工程实践至关重要。为此,广义极值(GEV)分布得到了广泛应用。为估计GEV分布的参数,主要采用了最大似然估计(MLE)和L矩估计(LME)方法。为了获得更好的MLE估计,已有若干研究考虑了广义MLE(惩罚似然或贝叶斯)方法,通过结合参数的惩罚函数或先验信息。然而,文献中尚未开发出用于相同目的的广义LME方法。因此,我们提出了广义L矩估计方法(GLME),以结合惩罚函数或先验信息。所提出的估计基于广义L矩距离和多元正态似然近似。由于L矩估计量对于小样本比MLE更有效且更稳健,我们有理由预期LME的优势在GLME中得以延续。所提出的方法应用于平稳和非平稳GEV模型,并结合两种新颖的(数据自适应的)惩罚函数来校正LME的偏差。模拟研究表明,GLME在标准误差略有增加的情况下,显著校正了LME的偏差。对美国洪水灾害数据和泰国Phliu Agromet地区最大降雨量的应用,说明了所提方法的实用性。本研究可能促进基于L矩的惩罚或贝叶斯推断的进一步工作。