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A comparison of moment-based methods of estimation for the log Pearson type 3 distribution

机译:对数Pearson 3型分布基于矩的估计方法的比较

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摘要

The log Pearson type 3 distribution is a very important model in statistical hydrology, especially for modeling annual flood series. In this paper we compare the various methods based on moments for estimating quantiles of this distribution. Besides the methods of direct and mixed moments which were found most successful in previous studies and the well-known indirect method of moments, we develop generalized direct moments and generalized mixed moments methods and a new method of adaptive mixed moments. The last method chooses the orders of two moments for the original observations by utilizing information contained in the sample itself. The results of Monte Carlo experiments demonstrated the superiority of this method in estimating flood events of high return periods when a large sample is available and in estimating hood events of low return periods regardless of the sample size. In addition, a comparison of simulation and asymptotic results shows that the adaptive method may be used for the construction of meaningful confidence intervals for design events based on the asymptotic theory even with small samples. The simulation results also point to the specific members of the class of generalized moments estimates which maintain small values for bias and/or mean square error. (C) 2000 Elsevier Science B.V. All rights reserved. [References: 21]
机译:对数Pearson类型3分布是统计水文学中非常重要的模型,尤其是对于年度洪水序列建模。在本文中,我们比较了基于矩的各种方法来估计这种分布的分位数。除了在以前的研究中最成功的直接矩和混合矩方法以及众所周知的间接矩方法外,我们还开发了广义直接矩和广义混合矩方法以及一种自适应混合矩的新方法。最后一种方法是利用样本本身包含的信息为原始观测值选择两个矩的阶数。蒙特卡罗实验的结果表明,该方法在估算有大量样本时的高回报期洪水事件和估算低回报期的烟罩事件(无论样本大小)方面均具有优势。此外,仿真结果和渐近结果的比较表明,即使样本量很小,也可以基于渐进理论将自适应方法用于构造有意义的设计事件置信区间。模拟结果还指出了广义矩估计类别中的特定成员,这些估计成员保持较小的偏差和/或均方误差值。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:21]

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