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Parameter and quantile estimation of the 2-parameter kappa distribution by maximum likelihood

机译:最大似然法的2参数kappa分布的参数和分位数估计

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摘要

Asymptotic properties of maximum likelihood parameter and quantile estimators of the 2-parameter kappa distribution are studied. Eight methods for obtaining large sample confidence intervals for the shape parameter and for quantiles of this distribution are proposed and compared by using Monte Carlo simulation. The best method is highlighted on the basis of the coverage probability of the confidence intervals that it produces for sample sizes commonly found in practice. For such sample sizes, confidence intervals for quantiles and for the shape parameter are shown to be more accurate if the quantile estimators are assumed to be log normally distributed rather than normally distributed (same for the shape parameter estimator). Also, confidence intervals based on the observed Fisher information matrix perform slightly better than those based on the expected value of this matrix. A hydrological example is provided in which the obtained theoretical results are applied.
机译:研究了两参数κ分布的最大似然参数和分位数估计的渐近性质。提出了八种方法来获取形状参数的大样本置信区间和该分布的分位数,并使用蒙特卡罗模拟进行了比较。最佳方法是根据针对实践中常见的样本量所产生的置信区间的覆盖概率来突出显示的。对于这样的样本量,如果假设分位数估计量是对数正态分布而不是正态分布(形状参数估计量相同),则分位数和形状参数的置信区间显示为更准确。同样,基于观察到的Fisher信息矩阵的置信区间比基于该矩阵的期望值的置信区间要好一些。提供了一个水文实例,其中应用了获得的理论结果。

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