峰度
数学
以线性矩
顺序统计量
分位数
统计
离群值
自动汇总
统计的
偏斜
概率分布
力矩(物理)
中心力矩
位置参数
经验概率
矩量法(概率论)
估计员
贝叶斯概率
矩母函数
计算机科学
后验概率
物理
经典力学
人工智能
标识
DOI:10.1111/j.2517-6161.1990.tb01775.x
摘要
SUMMARY L‐moments are expectations of certain linear combinations of order statistics. They can be defined for any random variable whose mean exists and form the basis of a general theory which covers the summarization and description of theoretical probability distributions, the summarization and description of observed data samples, estimation of parameters and quantiles of probability distributions, and hypothesis tests for probability distributions. The theory involves such established procedures as the use of order statistics and Gini's mean difference statistic, and gives rise to some promising innovations such as the measures of skewness and kurtosis described in Section 2, and new methods of parameter estimation for several distributions. The theory of L‐moments parallels the theory of (conventional) moments, as this list of applications might suggest. The main advantage of L‐moments over conventional moments is that L‐moments, being linear functions of the data, suffer less from the effects of sampling variability: L‐moments are more robust than conventional moments to outliers in the data and enable more secure inferences to be made from small samples about an underlying probability distribution. L‐moments sometimes yield more efficient parameter estimates than the maximum likelihood estimates.
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