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Empirical Bayes One-side Test for Inverse Exponential Model Based on Negative Associate Samples

机译:基于负关联样本的贝叶斯逆指数模型的经验贝叶斯单边检验

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By using the kernel-type density estimation and empirical distribution function in the case of identically distributed and negatively associated samples, the empirical Bayes one-sided test rules for the parameter of inverse exponential distribution are constructed based on negative associate sample under weighted linear loss function, and the asymptotically optimal property is obtained . It is shown that the convergence rates of the proposed empirical Bayes test rules can arbitrarily close to O(n~(-1/2) ) under suitable conditions.
机译:通过使用核型密度估计和经验分布函数,在样本具有相同分布和负相关的情况下,在加权线性损失函数下,基于负相关样本,构造了反指数分布参数的经验贝叶斯单边检验规则。并得到渐近最优性质。结果表明,所提出的经验贝叶斯检验规则的收敛速度可以在合适的条件下任意接近O(n〜(-1/2))。

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