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Regularized Bayesian estimation for GEV-B-splines model

机译:GEV-B样条模型的正则贝叶斯估计

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Large observed datasets are not stationary and/or depend on covariates, especially, in the case of extreme hydrometeorological variables. This causes the difficulty in estimation, using classical hydrological frequency analysis. A number of non-stationary models have been developed using linear or quadratic polynomial functions or B-splines functions to estimate the relationship between parameters and covariates. In this article, we propose regularised generalized extreme value model with B-splines (GEV-B-splines models) in a Bayesian framework to estimate quantiles. Regularisation is based on penalty and aims to favour parsimonious model especially in the case of large dimension space. Penalties are introduced in a Bayesian framework and the corresponding priors are detailed. Five penalties are considered and the corresponding priors are developed for comparison purpose as: Least absolute shrinkage and selection (Lasso and Ridge) and smoothing clipped absolute deviations (SCAD) methods (SCAD1, SCAD2 and SCAD3). Markov chain Monte Carlo (MCMC) algorithms have been developed for each model to estimate quantiles and their posterior distributions. Those approaches are tested and illustrated using simulated data with different sample sizes. A first simulation was made on polynomial B-splines functions in order to choose the most efficient model in terms of relative mean biais (RMB) and the relative mean-error (RME) criteria. A second simulation was performed with the SCAD1 penalty for sinusoidal dependence to illustrate the flexibility of the proposed approach. Results show clearly that the regularized approaches leads to a significant reduction of the bias and the mean square error, especially for small sample sizes (n < 100). A case study has been considered to model annual peak flows at Fort-Kent catchment with the total annual precipitations as covariates. The conditional quantile curves were given for the regularized and the maximum likelihood methods.
机译:观察到的大型数据集不是平稳的和/或取决于协变量,尤其是在极端水文气象变量的情况下。这导致使用经典水文频率分析进行估算的困难。已经使用线性或二次多项式函数或B样条函数开发了许多非平稳模型,以估计参数和协变量之间的关系。在本文中,我们建议在贝叶斯框架中使用B样条(GEV-B样条模型)的正则化广义极值模型来估计分位数。正则化基于惩罚,旨在支持简约模型,尤其是在大尺寸空间的情况下。在贝叶斯框架中引入了惩罚,并详细说明了相应的先验条件。考虑了五种惩罚,并制定了相应的先验以进行比较,例如:最小绝对收缩和选择(套索和岭)和平滑修剪绝对偏差(SCAD)方法(SCAD1,SCAD2和SCAD3)。已为每个模型开发了马尔可夫链蒙特卡罗(MCMC)算法,以估计分位数及其后验分布。使用具有不同样本量的模拟数据对这些方法进行了测试和说明。为了对相对平均偏差(RMB)和相对平均误差(RME)标准选择最有效的模型,对多项式B样条函数进行了首次仿真。用正弦曲线依赖性的SCAD1罚分进行了第二次仿真,以说明所提出方法的灵活性。结果清楚地表明,正规化方法可显着降低偏差和均方误差,尤其是对于小样本量(n <100)的情况。已经考虑了一个案例研究,以肯特堡集水区的年峰值流量为模型,将年总降水量作为协变量。给出了条件分位数曲线,用于正则化和最大似然法。

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