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Bias in Small-Sample Inference With Count-Data Models

机译:使用计数数据模型的小型样本推理偏差

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摘要

Both Poisson and negative binomial regression can provide quasi-likelihood estimates for coefficients in exponential-mean models that are consistent in the presence of distributional misspecification. It has generally been recommended, however, that inference be carried out using asymptotically robust estimators for the parameter covariance matrix. As with linear models, such robust inference tends to lead to over-rejection of null hypotheses in small samples. Alternative methods for estimating coefficient estimator variances are considered. No one approach seems to remove all test bias, but the results do suggest that the use of the jackknife with Poisson regression tends to be least biased for inference.
机译:泊松和负二项式回归都可以为在存在于分配误片的存在中的指数均值模型中的系数提供准似然估计。然而,通常建议使用该推断,使用用于参数协方差矩阵的渐近鲁棒估算器进行推断。与线性模型一样,这种稳健的推理趋于导致在小样本中过度抑制空假设。考虑了用于估计系数估计器差异的替代方法。没有一种方法似乎去除所有测试偏差,但结果表明,使用泊松回归的千刀往往是最不偏向的推断。

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