首页> 外文期刊>Model assisted statistics and applications >A revisit to testing the equality of several Poisson parameters
【24h】

A revisit to testing the equality of several Poisson parameters

机译:重新测试几个泊松参数是否相等

获取原文
获取原文并翻译 | 示例
       

摘要

Recently Chang et al. considered testing the equality of several Poisson parameters, and proposed a new parametric bootstrap (PB) method, called 'CAT'. The CAT was compared against fourteen other tests including the 'asymptotic likelihood ratio test' (ALRT) as well as the PB version of the likelihood ratio test (henceforth, PBLRT), and all were found to be conservative unless the common parameter values under the null hypothesis were not too small. In this paper we have proposed a few new test procedures based on two broad adjustments, namely (ⅰ) using different 'metrics' which measure deviation of the model parameters from the null hypothesis; and (ⅱ) using shrinkage estimators in the aforementioned 'metrics'. All the new tests are PB in nature which obtain their respective critical values through computational steps (i.e., one does not need to know the critical values explicitly for these tests). The resultant new tests are then studied through a comprehensive simulation, and compared against ALRT and PBLRT in terms of size and power. It has been noted that while two analogous versions of PBLRT work similar to PBLRT for small to moderate sample sizes, they tend to be almost identical for large sample sizes. Therefore, based on the overall performance we recommend PBLRT always.
机译:最近Chang等。考虑考虑测试多个泊松参数的相等性,并提出了一种称为“ CAT”的新参数自举(PB)方法。将CAT与其他14种测试进行了比较,包括“渐近似然比测试”(ALRT)以及似然比测试的PB版本(此后称为PBLRT),除非发现通用参数值低于原假设不算太小。在本文中,我们基于两个广泛的调整提出了一些新的测试程序,即(ⅰ)使用不同的“度量”来度量模型参数与原假设之间的偏差; (ⅱ)在上述“指标”中使用收缩率估算器。本质上,所有新测试都是PB,可以通过计算步骤获得各自的临界值(即,无需明确知道这些测试的临界值)。然后,通过全面的仿真研究所得的新测试,并在尺寸和功耗方面与ALRT和PBLRT进行比较。已经注意到,虽然PBLRT的两个类似版本在中小样本量下的工作方式与PBLRT类似,但对于大样本量,它们往往几乎相同。因此,基于整体性能,我们建议始终使用PBLRT。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号