The Bias in Moment Estimators for Parameters of Drop Size Distribution Functions: Sampling from Exponential Distributions

Paul L. Smith, D. Kliche
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引用次数: 57

Abstract

Abstract The moment estimators frequently used to estimate parameters for drop size distribution (DSD) functions being “fitted” to observed raindrop size distributions are biased. Consequently, the fitted functions often do not represent well either the raindrop samples or the underlying populations from which the samples were taken. Monte Carlo simulations of the process of sampling from a known exponential DSD, followed by the application of a variety of moment estimators, demonstrate this bias. Skewness in the sampling distributions of the DSD moments is the root cause of this bias, and this skewness increases with the order of the moment. As a result, the bias is stronger when higher-order moments are used in the procedures. Correlations of the sample moments with the size of the largest drop in a sample (Dmax) lead to correlations of the estimated parameters with Dmax, and, in turn, to spurious correlations between the parameters. These things can lead to erroneous inferences about characteristics of...
水滴大小分布函数参数的矩估计偏差:从指数分布中抽样
摘要用于估计雨滴大小分布(DSD)函数参数的矩估计量被“拟合”到观测到的雨滴大小分布是有偏的。因此,拟合函数通常不能很好地代表雨滴样本或从样本中提取的潜在种群。蒙特卡罗模拟了从已知指数DSD采样的过程,随后应用了各种矩估计器,证明了这种偏差。DSD矩的抽样分布的偏性是这种偏差的根本原因,并且这种偏性随着矩的顺序而增加。因此,当在程序中使用高阶矩时,偏差更强。样本矩与样本中最大下降的大小(Dmax)的相关性导致估计参数与Dmax的相关性,并且反过来导致参数之间的虚假相关性。这些事情会导致对……特征的错误推断。
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