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An Example of an Improvable Rao–Blackwell Improvement Inefficient Maximum Likelihood Estimator and Unbiased Generalized Bayes Estimator

机译:改进的Rao-Blackwell改进无效最大似然估计和无偏广义贝叶斯估计的示例

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摘要

The Rao–Blackwell theorem offers a procedure for converting a crude unbiased estimator of a parameter θ into a “better” one, in fact unique and optimal if the improvement is based on a minimal sufficient statistic that is complete. In contrast, behind every minimal sufficient statistic that is not complete, there is an improvable Rao–Blackwell improvement. This is illustrated via a simple example based on the uniform distribution, in which a rather natural Rao–Blackwell improvement is uniformly improvable. Furthermore, in this example the maximum likelihood estimator is inefficient, and an unbiased generalized Bayes estimator performs exceptionally well. Counterexamples of this sort can be useful didactic tools for explaining the true nature of a methodology and possible consequences when some of the assumptions are violated.[Received December 2014. Revised September 2015.]
机译:Rao–Blackwell定理提供了一种程序,可以将参数θ的粗略无偏估计量转换为“更好”的估计量,如果改进是基于最小的完整统计量,则它实际上是唯一且最优的。相反,在每个不完整的最小充分统计量背后,Rao-Blackwell的改进值得改进。通过一个基于均匀分布的简单示例说明了这一点,在该示例中,均匀地改善了Rao-Blackwell的自然改进。此外,在该示例中,最大似然估计器效率低下,并且无偏广义贝叶斯估计器的性能异常出色。此类反例可以作为有用的教学工具,用于解释违反某些假设的方法的真实性质和可能产生的后果。[2014年12月,2015年9月修订。]

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