Debiased inference in error-in-variable problems with non-Gaussian measurement error
Debiased inference in error-in-variable problems with non-Gaussian measurement error
We consider drawing statistical inferences based on data subject to non-Gaussian measurement error. Unlike most existing methods developed under the assumption of Gaussian measurement error, the proposed strategy exploits hypercomplex numbers to reduce bias in naive estimation that ignores non-Gaussian measurement error. We apply this new method to several widely applicable parametric regression models with error-prone covariates, and kernel density estimation using error-contaminated data. The efficacy of this method in bias reduction is demonstrated in simulation studies and a real-life application in sports analytics.
Xianzheng Huang、Nicholas W. Woolsey
数学
Xianzheng Huang,Nicholas W. Woolsey.Debiased inference in error-in-variable problems with non-Gaussian measurement error[EB/OL].(2025-05-05)[2025-06-01].https://arxiv.org/abs/2505.02754.点此复制
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