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Quasimaximum Likelihood Estimators for Two-parameter Gamma Distributions

机译:两参数伽玛分布的拟最大似然估计

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The Gamma probability distribution is defined by the density function [βαγ(α)]−1 exp (−x/β). This paper presents new estimators for the parameters α−1 and β. Required calculations are simple, primarily involving the inner product of certain elementary statistics and their logarithms. Both of the new estimators are shown to be unbiased. The variance formulas for each and their covariance formula are derived—counterparts of these for the method of moments (MM) and the method of maximum likelihood (ML) not being known except in the asymptotic form. Curve-fitting results from samples of size 50 are provided. They support the proposition that the new quasimaximum likelihood estimators (QML) are at least as effective as MM and ML estimators. Illustrative estimation based on samples of size 5 also is presented for comparison; the results highlight relative smaller variances for the ML estimators. The same Monte Carlo results signal a possibility that significant negative bias occurs with both the MM and ML techniques if small samples are used.
机译:伽马概率分布由密度函数[βαγ(α)]-1 exp(-x /β)定义。本文提出了参数α-1和β的新估计量。所需的计算很简单,主要涉及某些基本统计信息及其对数的内积。两个新的估计量均显示为无偏。推导了每个变量的方差公式和它们的协方差公式-除了渐近形式外,矩量法(MM)和最大似然法(ML)的方差公式是未知的。提供了大小为50的样本的曲线拟合结果。他们支持新的拟最大似然估计器(QML)至少与MM和ML估计器一样有效的主张。还提供了基于大小为5的样本的示例性估算,以便进行比较;结果表明,ML估计量的方差相对较小。如果使用小样本,则相同的蒙特卡洛结果表明MM和ML技术都可能会产生明显的负偏差。

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