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On the Estimation of a Univariate Gaussian Distribution: A Comparative Approach

机译:关于单变量高斯分布的估计:一种比较方法

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摘要

Estimation of the unknown mean, μ and variance, σ2 of a univariate Gaussian distribution given a single study variable x is considered. We propose an approach that does not require initialization of the sufficient unknown distribution parameters. The approach is motivated by linearizing the Gaussian distribution through differential techniques, and estimating, μ and σ2 as regression coefficients using the ordinary least squares method. Two simulated datasets on hereditary traits and morphometric analysis of housefly strains are used to evaluate the proposed method (PM), the maximum likelihood estimation (MLE), and the method of moments (MM). The methods are evaluated by re-estimating the required Gaussian parameters on both large and small samples. The root mean squared error (RMSE), mean error (ME), and the standard deviation (SD) are used to assess the accuracy of the PM and MLE; confidence intervals (CIs) are also constructed for the ME estimate. The PM compares well with both the MLE and MM approaches as they all produce estimates whose errors have good asymptotic properties, also small CIs are observed for the ME using the PM and MLE. The PM can be used symbiotically with the MLE to provide initial approximations at the expectation maximization step.
机译:考虑给定单个研究变量x时,单变量高斯分布的未知均值μ和方差σ2的估计。我们提出一种不需要初始化足够的未知分布参数的方法。该方法的动机是通过微分技术线性化高斯分布,并使用普通最小二乘法估计μ和σ2作为回归系数。使用两个关于遗传特征和家蝇菌株形态分析的模拟数据集来评估所提出的方法(PM),最大似然估计(MLE)和矩量方法(MM)。通过重新估计大小样本上所需的高斯参数来评估方法。均方根误差(RMSE),均方误差(ME)和标准差(SD)用于评估PM和MLE的准确性;还为ME估计构建了置信区间(CI)。 PM与MLE和MM方法都可以很好地比较,因为它们都产生估计,其误差具有良好的渐近特性,并且使用PM和MLE观察到ME的CI较小。可以将PM与MLE共生使用,以在期望最大化步骤中提供初始近似值。

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