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Estimating the Correlation in Bivariate Normal Data with Known Variances and Small Sample Sizes

机译:用已知的差异和小样本尺寸估算二核常规数据中的相关性

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摘要

We consider the problem of estimating the correlation in bivariate normal data when the means and variances are assumed known, with emphasis on the small sample case. We consider eight different estimators, several of them considered here for the first time in the literature. In a simulation study, we found that Bayesian estimators using the uniform and arc-sine priors outperformed several empirical and exact or approximate maximum likelihood estimators in small samples. The arc-sine prior did better for large values of the correlation. For testing whether the correlation is zero, we found that Bayesian hypothesis tests outperformed significance tests based on the empirical and exact or approximate maximum likelihood estimators considered in small samples, but that all tests performed similarly for sample size 50. These results lead us to suggest using the posterior mean with the arc-sine prior to estimate the correlation in small samples when the variances are assumed known.
机译:我们考虑估计在已知手段和差异时自二变正常数据中的相关性的问题,重点是小样本情况。我们考虑了八个不同的估算器,其中几个在文献中首次考虑过。在模拟研究中,我们发现使用均匀和弧形正弦前沿的贝叶斯估计优于小样本中的几个经验和精确或近似最大似然估计。 Arc-Sine之前的相关性的更好的相关性。为了测试相关性是否为零,我们发现贝叶斯假设基于小型样本中考虑的经验和精确或近似最大似然估计,但所有测试都与样本大小相似。这些结果导致我们提出在假设已知差异时,使用后均值与弧形正弦估计小样本中的相关性。

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