Frequentist model averaging for zero-inflated Poisson regression models.

Stat. Anal. Data Min.(2022)

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摘要
This paper considers frequentist model averaging for estimating the unknown parameters of the zero-inflated Poisson regression model. Our proposed weight choice procedure is based on the minimization of an unbiased estimator of a conditional quadratic loss function. We prove that the resulting model average estimator enjoys optimal asymptotic property and improves finite sample properties over the two commonly used information-based model selection estimators and their model average estimators via simulation studies. The proposed method is illustrated by a real data example.
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关键词
count data,loss function,model averaging,stacking,zero-inflated Poisson regression model
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