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基于MCMC模拟的MGPD模型及其在地质灾害风险度量中的应用
引用本文:欧阳迪飞,杨扬,甘柳,李应求.基于MCMC模拟的MGPD模型及其在地质灾害风险度量中的应用[J].湖南农业大学学报(自然科学版),2015(2):101-106.
作者姓名:欧阳迪飞  杨扬  甘柳  李应求
作者单位:(1.长沙理工大学 数学与计算科学学院,湖南 长沙410004;2.湖南商学院 财政金融学院,湖南 长沙410205)
摘    要:基于马尔科夫链蒙特卡洛(简记为MCMC)模拟的参数贝叶斯估计,对改进的广义帕累托分布(简记为MGPD)模型进行了优化,并利用该模型得到了地质灾害损失的在险损失值(简记为VaR)和条件损失值(简记为CVaR).以湖南娄底市地质灾害损失数据进行实证分析及模型适应性检验,结果表明:优化后的模型不仅具有很好的极值数据描述能力,而且具有较强的适用性.

关 键 词:马尔科夫链蒙特卡洛模拟  贝叶斯估计  改进广义帕累托分布  地质灾害

The MGPD Model Based on MCMC Simulation and Its Application in Geological Disaster Risk Measure
OUYANG Di-fei,YANG Yang,GAN Liu,LI Ying-qiu.The MGPD Model Based on MCMC Simulation and Its Application in Geological Disaster Risk Measure[J].Journal of Hunan Agricultural University,2015(2):101-106.
Authors:OUYANG Di-fei  YANG Yang  GAN Liu  LI Ying-qiu
Abstract:We used Bayesian estimation based on Markov Chain simulation to optimize the meliorated Generalized Pareto Distribution model (MGPD), and obtained the estimation of the Value at Risk(VaR) and Conditionl Value at Risk(CVaR). The empirical study and adaptability test of the model were based on geological disasters loss data of Loudi City in Hunan Province. The conclusion shows the optimized model has not only excellent ability in describing the data, but also extensive applicability.
Keywords:Markov Chain Monte Carlo simulation  Bayesian estimation  meliorated generalized Pareto distribution model  geological disaster
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