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首页> 外文期刊>International Journal of Statistics and Probability >Estimation of the Parameters of Bivariate Normal Distribution with Equal Coefficient of Variation Using Concomitants of Order Statistics
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Estimation of the Parameters of Bivariate Normal Distribution with Equal Coefficient of Variation Using Concomitants of Order Statistics

机译:使用顺序统计分配的变异系数与等变异系数的估计相等系数

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To provide an optimum estimator for the parameters, the use of priori information has a crucial role in univariate as well as bivariate distributions. One such prior information is to utilize the knowledge on coefficient of variation in the inference problems. In the past plenty of work was carried out regarding the estimation of the mean $mu$ of the normal distribution with known coefficient of variation. Also inference about the parameters of bivariate normal distribution in which $X$ and $Y$ have the equal (known) coefficient of variation $c$, are extensively discussed in the available literature. Such studies arise in clinical chemistry and pharmaceutical sciences. It is interesting to note that concomitants of order statistics are applied successfully to deal with statistical inference problems associated with several real life situations. A problem of interest considered here is the estimation of parameters of bivariate normal distribution in which $X$ and $Y$ have the same coefficient of variation $c$ using concomitants of order statistics. For that consider a sample of $n$ pairs of observations from a bivariate normal distribution? in which $X$ and $Y$ have the same coefficient of variation $c$, we derive the best linear unbiased estimator (BLUE) of $heta_2$ and derive some estimators of $artheta$. Efficiency comparisons are also made on the proposed estimators with some of the usual estimators, finally we conclude that efficiency of our best linear unbiased estimator (BLUE) $ilde{heta_{2}}$ is much better than that of the estimators $hat{heta}_{2}$ and $heta^{st}_{2}$.
机译:为了为参数提供最佳估计器,使用先验信息在单变量和双变量分布中具有至关重要的作用。一个这样的现有信息是利用推论问题中变异系数的知识。在过去的大量工作中,关于估计的平均$ mu $的正常分布,具有已知的变异系数。还推断了双方正常分布的参数,其中$ x $和$ y $具有相同的(已知的)变异系数$ C $,在可用文献中广泛讨论。这些研究在临床化学和制药科学中出现。值得注意的是,顺序统计数据的伴随物成功应用于处理与若干现实生活中相关的统计推理问题。这里考虑的兴趣问题是估计二元正常分布的参数,其中$ x $和$ y $使用订单统计数据的伴奏有同伴C $ C $ C $。为此,请考虑一下与双方正常分布的N $对观察的样本?其中$ x $和$ y $具有相同的变异系数$ c $,我们派生了$ theta_2 $的最佳线性无偏见估计器(蓝色),并派生一些$ vartheta $的估算器。效率比较也是在拟议的估计中进行了一些常见的估算,最后我们得出结论,我们最好的线性无偏见估计(蓝色)$ TINDE { THETA_ {2}} $的效率远比估算者$大得多 hat { theta} _ {2} $和$ theta ^ { ast} _ {2} $。

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